#__docformat__ = "restructuredtext en" # ******NOTICE*************** # optimize.py module by Travis E. Oliphant # # You may copy and use this module as you see fit with no # guarantee implied provided you keep this notice in all copies. # *****END NOTICE************ # A collection of optimization algorithms. Version 0.5 # CHANGES # Added fminbound (July 2001) # Added brute (Aug. 2002) # Finished line search satisfying strong Wolfe conditions (Mar. 2004) # Updated strong Wolfe conditions line search to use # cubic-interpolation (Mar. 2004) # Minimization routines __all__ = ['fmin', 'fmin_powell', 'fmin_bfgs', 'fmin_ncg', 'fmin_cg', 'fminbound', 'brent', 'golden', 'bracket', 'rosen', 'rosen_der', 'rosen_hess', 'rosen_hess_prod', 'brute', 'approx_fprime', 'line_search', 'check_grad', 'OptimizeResult', 'show_options', 'OptimizeWarning'] __docformat__ = "restructuredtext en" import math import warnings import sys import inspect from numpy import (atleast_1d, eye, argmin, zeros, shape, squeeze, asarray, sqrt) import numpy as np from scipy.linalg import cholesky, issymmetric, LinAlgError from scipy.sparse.linalg import LinearOperator from ._linesearch import (line_search_wolfe1, line_search_wolfe2, line_search_wolfe2 as line_search, LineSearchWarning) from ._numdiff import approx_derivative from scipy._lib._util import getfullargspec_no_self as _getfullargspec from scipy._lib._util import (MapWrapper, check_random_state, _RichResult, _call_callback_maybe_halt) from scipy.optimize._differentiable_functions import ScalarFunction, FD_METHODS # standard status messages of optimizers _status_message = {'success': 'Optimization terminated successfully.', 'maxfev': 'Maximum number of function evaluations has ' 'been exceeded.', 'maxiter': 'Maximum number of iterations has been ' 'exceeded.', 'pr_loss': 'Desired error not necessarily achieved due ' 'to precision loss.', 'nan': 'NaN result encountered.', 'out_of_bounds': 'The result is outside of the provided ' 'bounds.'} class MemoizeJac: """ Decorator that caches the return values of a function returning `(fun, grad)` each time it is called. """ def __init__(self, fun): self.fun = fun self.jac = None self._value = None self.x = None def _compute_if_needed(self, x, *args): if not np.all(x == self.x) or self._value is None or self.jac is None: self.x = np.asarray(x).copy() fg = self.fun(x, *args) self.jac = fg[1] self._value = fg[0] def __call__(self, x, *args): """ returns the function value """ self._compute_if_needed(x, *args) return self._value def derivative(self, x, *args): self._compute_if_needed(x, *args) return self.jac def _wrap_callback(callback, method=None): """Wrap a user-provided callback so that attributes can be attached.""" if callback is None or method in {'tnc', 'slsqp', 'cobyla'}: return callback # don't wrap sig = inspect.signature(callback) if set(sig.parameters) == {'intermediate_result'}: def wrapped_callback(res): return callback(intermediate_result=res) elif method == 'trust-constr': def wrapped_callback(res): return callback(np.copy(res.x), res) elif method == 'differential_evolution': def wrapped_callback(res): return callback(np.copy(res.x), res.convergence) else: def wrapped_callback(res): return callback(np.copy(res.x)) wrapped_callback.stop_iteration = False return wrapped_callback class OptimizeResult(_RichResult): """ Represents the optimization result. Attributes ---------- x : ndarray The solution of the optimization. success : bool Whether or not the optimizer exited successfully. status : int Termination status of the optimizer. Its value depends on the underlying solver. Refer to `message` for details. message : str Description of the cause of the termination. fun, jac, hess: ndarray Values of objective function, its Jacobian and its Hessian (if available). The Hessians may be approximations, see the documentation of the function in question. hess_inv : object Inverse of the objective function's Hessian; may be an approximation. Not available for all solvers. The type of this attribute may be either np.ndarray or scipy.sparse.linalg.LinearOperator. nfev, njev, nhev : int Number of evaluations of the objective functions and of its Jacobian and Hessian. nit : int Number of iterations performed by the optimizer. maxcv : float The maximum constraint violation. Notes ----- Depending on the specific solver being used, `OptimizeResult` may not have all attributes listed here, and they may have additional attributes not listed here. Since this class is essentially a subclass of dict with attribute accessors, one can see which attributes are available using the `OptimizeResult.keys` method. """ pass class OptimizeWarning(UserWarning): pass def _check_positive_definite(Hk): def is_pos_def(A): if issymmetric(A): try: cholesky(A) return True except LinAlgError: return False else: return False if Hk is not None: if not is_pos_def(Hk): raise ValueError("'hess_inv0' matrix isn't positive definite.") def _check_unknown_options(unknown_options): if unknown_options: msg = ", ".join(map(str, unknown_options.keys())) # Stack level 4: this is called from _minimize_*, which is # called from another function in SciPy. Level 4 is the first # level in user code. warnings.warn("Unknown solver options: %s" % msg, OptimizeWarning, stacklevel=4) def is_finite_scalar(x): """Test whether `x` is either a finite scalar or a finite array scalar. """ return np.size(x) == 1 and np.isfinite(x) _epsilon = sqrt(np.finfo(float).eps) def vecnorm(x, ord=2): if ord == np.inf: return np.amax(np.abs(x)) elif ord == -np.inf: return np.amin(np.abs(x)) else: return np.sum(np.abs(x)**ord, axis=0)**(1.0 / ord) def _prepare_scalar_function(fun, x0, jac=None, args=(), bounds=None, epsilon=None, finite_diff_rel_step=None, hess=None): """ Creates a ScalarFunction object for use with scalar minimizers (BFGS/LBFGSB/SLSQP/TNC/CG/etc). Parameters ---------- fun : callable The objective function to be minimized. ``fun(x, *args) -> float`` where ``x`` is an 1-D array with shape (n,) and ``args`` is a tuple of the fixed parameters needed to completely specify the function. x0 : ndarray, shape (n,) Initial guess. Array of real elements of size (n,), where 'n' is the number of independent variables. jac : {callable, '2-point', '3-point', 'cs', None}, optional Method for computing the gradient vector. If it is a callable, it should be a function that returns the gradient vector: ``jac(x, *args) -> array_like, shape (n,)`` If one of `{'2-point', '3-point', 'cs'}` is selected then the gradient is calculated with a relative step for finite differences. If `None`, then two-point finite differences with an absolute step is used. args : tuple, optional Extra arguments passed to the objective function and its derivatives (`fun`, `jac` functions). bounds : sequence, optional Bounds on variables. 'new-style' bounds are required. eps : float or ndarray If `jac is None` the absolute step size used for numerical approximation of the jacobian via forward differences. finite_diff_rel_step : None or array_like, optional If `jac in ['2-point', '3-point', 'cs']` the relative step size to use for numerical approximation of the jacobian. The absolute step size is computed as ``h = rel_step * sign(x0) * max(1, abs(x0))``, possibly adjusted to fit into the bounds. For ``jac='3-point'`` the sign of `h` is ignored. If None (default) then step is selected automatically. hess : {callable, '2-point', '3-point', 'cs', None} Computes the Hessian matrix. If it is callable, it should return the Hessian matrix: ``hess(x, *args) -> {LinearOperator, spmatrix, array}, (n, n)`` Alternatively, the keywords {'2-point', '3-point', 'cs'} select a finite difference scheme for numerical estimation. Whenever the gradient is estimated via finite-differences, the Hessian cannot be estimated with options {'2-point', '3-point', 'cs'} and needs to be estimated using one of the quasi-Newton strategies. Returns ------- sf : ScalarFunction """ if callable(jac): grad = jac elif jac in FD_METHODS: # epsilon is set to None so that ScalarFunction is made to use # rel_step epsilon = None grad = jac else: # default (jac is None) is to do 2-point finite differences with # absolute step size. ScalarFunction has to be provided an # epsilon value that is not None to use absolute steps. This is # normally the case from most _minimize* methods. grad = '2-point' epsilon = epsilon if hess is None: # ScalarFunction requires something for hess, so we give a dummy # implementation here if nothing is provided, return a value of None # so that downstream minimisers halt. The results of `fun.hess` # should not be used. def hess(x, *args): return None if bounds is None: bounds = (-np.inf, np.inf) # ScalarFunction caches. Reuse of fun(x) during grad # calculation reduces overall function evaluations. sf = ScalarFunction(fun, x0, args, grad, hess, finite_diff_rel_step, bounds, epsilon=epsilon) return sf def _clip_x_for_func(func, bounds): # ensures that x values sent to func are clipped to bounds # this is used as a mitigation for gh11403, slsqp/tnc sometimes # suggest a move that is outside the limits by 1 or 2 ULP. This # unclean fix makes sure x is strictly within bounds. def eval(x): x = _check_clip_x(x, bounds) return func(x) return eval def _check_clip_x(x, bounds): if (x < bounds[0]).any() or (x > bounds[1]).any(): warnings.warn("Values in x were outside bounds during a " "minimize step, clipping to bounds", RuntimeWarning, stacklevel=3) x = np.clip(x, bounds[0], bounds[1]) return x return x def rosen(x): """ The Rosenbrock function. The function computed is:: sum(100.0*(x[1:] - x[:-1]**2.0)**2.0 + (1 - x[:-1])**2.0) Parameters ---------- x : array_like 1-D array of points at which the Rosenbrock function is to be computed. Returns ------- f : float The value of the Rosenbrock function. See Also -------- rosen_der, rosen_hess, rosen_hess_prod Examples -------- >>> import numpy as np >>> from scipy.optimize import rosen >>> X = 0.1 * np.arange(10) >>> rosen(X) 76.56 For higher-dimensional input ``rosen`` broadcasts. In the following example, we use this to plot a 2D landscape. Note that ``rosen_hess`` does not broadcast in this manner. >>> import matplotlib.pyplot as plt >>> from mpl_toolkits.mplot3d import Axes3D >>> x = np.linspace(-1, 1, 50) >>> X, Y = np.meshgrid(x, x) >>> ax = plt.subplot(111, projection='3d') >>> ax.plot_surface(X, Y, rosen([X, Y])) >>> plt.show() """ x = asarray(x) r = np.sum(100.0 * (x[1:] - x[:-1]**2.0)**2.0 + (1 - x[:-1])**2.0, axis=0) return r def rosen_der(x): """ The derivative (i.e. gradient) of the Rosenbrock function. Parameters ---------- x : array_like 1-D array of points at which the derivative is to be computed. Returns ------- rosen_der : (N,) ndarray The gradient of the Rosenbrock function at `x`. See Also -------- rosen, rosen_hess, rosen_hess_prod Examples -------- >>> import numpy as np >>> from scipy.optimize import rosen_der >>> X = 0.1 * np.arange(9) >>> rosen_der(X) array([ -2. , 10.6, 15.6, 13.4, 6.4, -3. , -12.4, -19.4, 62. ]) """ x = asarray(x) xm = x[1:-1] xm_m1 = x[:-2] xm_p1 = x[2:] der = np.zeros_like(x) der[1:-1] = (200 * (xm - xm_m1**2) - 400 * (xm_p1 - xm**2) * xm - 2 * (1 - xm)) der[0] = -400 * x[0] * (x[1] - x[0]**2) - 2 * (1 - x[0]) der[-1] = 200 * (x[-1] - x[-2]**2) return der def rosen_hess(x): """ The Hessian matrix of the Rosenbrock function. Parameters ---------- x : array_like 1-D array of points at which the Hessian matrix is to be computed. Returns ------- rosen_hess : ndarray The Hessian matrix of the Rosenbrock function at `x`. See Also -------- rosen, rosen_der, rosen_hess_prod Examples -------- >>> import numpy as np >>> from scipy.optimize import rosen_hess >>> X = 0.1 * np.arange(4) >>> rosen_hess(X) array([[-38., 0., 0., 0.], [ 0., 134., -40., 0.], [ 0., -40., 130., -80.], [ 0., 0., -80., 200.]]) """ x = atleast_1d(x) H = np.diag(-400 * x[:-1], 1) - np.diag(400 * x[:-1], -1) diagonal = np.zeros(len(x), dtype=x.dtype) diagonal[0] = 1200 * x[0]**2 - 400 * x[1] + 2 diagonal[-1] = 200 diagonal[1:-1] = 202 + 1200 * x[1:-1]**2 - 400 * x[2:] H = H + np.diag(diagonal) return H def rosen_hess_prod(x, p): """ Product of the Hessian matrix of the Rosenbrock function with a vector. Parameters ---------- x : array_like 1-D array of points at which the Hessian matrix is to be computed. p : array_like 1-D array, the vector to be multiplied by the Hessian matrix. Returns ------- rosen_hess_prod : ndarray The Hessian matrix of the Rosenbrock function at `x` multiplied by the vector `p`. See Also -------- rosen, rosen_der, rosen_hess Examples -------- >>> import numpy as np >>> from scipy.optimize import rosen_hess_prod >>> X = 0.1 * np.arange(9) >>> p = 0.5 * np.arange(9) >>> rosen_hess_prod(X, p) array([ -0., 27., -10., -95., -192., -265., -278., -195., -180.]) """ x = atleast_1d(x) Hp = np.zeros(len(x), dtype=x.dtype) Hp[0] = (1200 * x[0]**2 - 400 * x[1] + 2) * p[0] - 400 * x[0] * p[1] Hp[1:-1] = (-400 * x[:-2] * p[:-2] + (202 + 1200 * x[1:-1]**2 - 400 * x[2:]) * p[1:-1] - 400 * x[1:-1] * p[2:]) Hp[-1] = -400 * x[-2] * p[-2] + 200*p[-1] return Hp def _wrap_scalar_function(function, args): # wraps a minimizer function to count number of evaluations # and to easily provide an args kwd. ncalls = [0] if function is None: return ncalls, None def function_wrapper(x, *wrapper_args): ncalls[0] += 1 # A copy of x is sent to the user function (gh13740) fx = function(np.copy(x), *(wrapper_args + args)) # Ideally, we'd like to a have a true scalar returned from f(x). For # backwards-compatibility, also allow np.array([1.3]), np.array([[1.3]]) etc. if not np.isscalar(fx): try: fx = np.asarray(fx).item() except (TypeError, ValueError) as e: raise ValueError("The user-provided objective function " "must return a scalar value.") from e return fx return ncalls, function_wrapper class _MaxFuncCallError(RuntimeError): pass def _wrap_scalar_function_maxfun_validation(function, args, maxfun): # wraps a minimizer function to count number of evaluations # and to easily provide an args kwd. ncalls = [0] if function is None: return ncalls, None def function_wrapper(x, *wrapper_args): if ncalls[0] >= maxfun: raise _MaxFuncCallError("Too many function calls") ncalls[0] += 1 # A copy of x is sent to the user function (gh13740) fx = function(np.copy(x), *(wrapper_args + args)) # Ideally, we'd like to a have a true scalar returned from f(x). For # backwards-compatibility, also allow np.array([1.3]), # np.array([[1.3]]) etc. if not np.isscalar(fx): try: fx = np.asarray(fx).item() except (TypeError, ValueError) as e: raise ValueError("The user-provided objective function " "must return a scalar value.") from e return fx return ncalls, function_wrapper def fmin(func, x0, args=(), xtol=1e-4, ftol=1e-4, maxiter=None, maxfun=None, full_output=0, disp=1, retall=0, callback=None, initial_simplex=None): """ Minimize a function using the downhill simplex algorithm. This algorithm only uses function values, not derivatives or second derivatives. Parameters ---------- func : callable func(x,*args) The objective function to be minimized. x0 : ndarray Initial guess. args : tuple, optional Extra arguments passed to func, i.e., ``f(x,*args)``. xtol : float, optional Absolute error in xopt between iterations that is acceptable for convergence. ftol : number, optional Absolute error in func(xopt) between iterations that is acceptable for convergence. maxiter : int, optional Maximum number of iterations to perform. maxfun : number, optional Maximum number of function evaluations to make. full_output : bool, optional Set to True if fopt and warnflag outputs are desired. disp : bool, optional Set to True to print convergence messages. retall : bool, optional Set to True to return list of solutions at each iteration. callback : callable, optional Called after each iteration, as callback(xk), where xk is the current parameter vector. initial_simplex : array_like of shape (N + 1, N), optional Initial simplex. If given, overrides `x0`. ``initial_simplex[j,:]`` should contain the coordinates of the jth vertex of the ``N+1`` vertices in the simplex, where ``N`` is the dimension. Returns ------- xopt : ndarray Parameter that minimizes function. fopt : float Value of function at minimum: ``fopt = func(xopt)``. iter : int Number of iterations performed. funcalls : int Number of function calls made. warnflag : int 1 : Maximum number of function evaluations made. 2 : Maximum number of iterations reached. allvecs : list Solution at each iteration. See also -------- minimize: Interface to minimization algorithms for multivariate functions. See the 'Nelder-Mead' `method` in particular. Notes ----- Uses a Nelder-Mead simplex algorithm to find the minimum of function of one or more variables. This algorithm has a long history of successful use in applications. But it will usually be slower than an algorithm that uses first or second derivative information. In practice, it can have poor performance in high-dimensional problems and is not robust to minimizing complicated functions. Additionally, there currently is no complete theory describing when the algorithm will successfully converge to the minimum, or how fast it will if it does. Both the ftol and xtol criteria must be met for convergence. Examples -------- >>> def f(x): ... return x**2 >>> from scipy import optimize >>> minimum = optimize.fmin(f, 1) Optimization terminated successfully. Current function value: 0.000000 Iterations: 17 Function evaluations: 34 >>> minimum[0] -8.8817841970012523e-16 References ---------- .. [1] Nelder, J.A. and Mead, R. (1965), "A simplex method for function minimization", The Computer Journal, 7, pp. 308-313 .. [2] Wright, M.H. (1996), "Direct Search Methods: Once Scorned, Now Respectable", in Numerical Analysis 1995, Proceedings of the 1995 Dundee Biennial Conference in Numerical Analysis, D.F. Griffiths and G.A. Watson (Eds.), Addison Wesley Longman, Harlow, UK, pp. 191-208. """ opts = {'xatol': xtol, 'fatol': ftol, 'maxiter': maxiter, 'maxfev': maxfun, 'disp': disp, 'return_all': retall, 'initial_simplex': initial_simplex} callback = _wrap_callback(callback) res = _minimize_neldermead(func, x0, args, callback=callback, **opts) if full_output: retlist = res['x'], res['fun'], res['nit'], res['nfev'], res['status'] if retall: retlist += (res['allvecs'], ) return retlist else: if retall: return res['x'], res['allvecs'] else: return res['x'] def _minimize_neldermead(func, x0, args=(), callback=None, maxiter=None, maxfev=None, disp=False, return_all=False, initial_simplex=None, xatol=1e-4, fatol=1e-4, adaptive=False, bounds=None, **unknown_options): """ Minimization of scalar function of one or more variables using the Nelder-Mead algorithm. Options ------- disp : bool Set to True to print convergence messages. maxiter, maxfev : int Maximum allowed number of iterations and function evaluations. Will default to ``N*200``, where ``N`` is the number of variables, if neither `maxiter` or `maxfev` is set. If both `maxiter` and `maxfev` are set, minimization will stop at the first reached. return_all : bool, optional Set to True to return a list of the best solution at each of the iterations. initial_simplex : array_like of shape (N + 1, N) Initial simplex. If given, overrides `x0`. ``initial_simplex[j,:]`` should contain the coordinates of the jth vertex of the ``N+1`` vertices in the simplex, where ``N`` is the dimension. xatol : float, optional Absolute error in xopt between iterations that is acceptable for convergence. fatol : number, optional Absolute error in func(xopt) between iterations that is acceptable for convergence. adaptive : bool, optional Adapt algorithm parameters to dimensionality of problem. Useful for high-dimensional minimization [1]_. bounds : sequence or `Bounds`, optional Bounds on variables. There are two ways to specify the bounds: 1. Instance of `Bounds` class. 2. Sequence of ``(min, max)`` pairs for each element in `x`. None is used to specify no bound. Note that this just clips all vertices in simplex based on the bounds. References ---------- .. [1] Gao, F. and Han, L. Implementing the Nelder-Mead simplex algorithm with adaptive parameters. 2012. Computational Optimization and Applications. 51:1, pp. 259-277 """ _check_unknown_options(unknown_options) maxfun = maxfev retall = return_all x0 = np.atleast_1d(x0).flatten() dtype = x0.dtype if np.issubdtype(x0.dtype, np.inexact) else np.float64 x0 = np.asarray(x0, dtype=dtype) if adaptive: dim = float(len(x0)) rho = 1 chi = 1 + 2/dim psi = 0.75 - 1/(2*dim) sigma = 1 - 1/dim else: rho = 1 chi = 2 psi = 0.5 sigma = 0.5 nonzdelt = 0.05 zdelt = 0.00025 if bounds is not None: lower_bound, upper_bound = bounds.lb, bounds.ub # check bounds if (lower_bound > upper_bound).any(): raise ValueError("Nelder Mead - one of the lower bounds " "is greater than an upper bound.", stacklevel=3) if np.any(lower_bound > x0) or np.any(x0 > upper_bound): warnings.warn("Initial guess is not within the specified bounds", OptimizeWarning, stacklevel=3) if bounds is not None: x0 = np.clip(x0, lower_bound, upper_bound) if initial_simplex is None: N = len(x0) sim = np.empty((N + 1, N), dtype=x0.dtype) sim[0] = x0 for k in range(N): y = np.array(x0, copy=True) if y[k] != 0: y[k] = (1 + nonzdelt)*y[k] else: y[k] = zdelt sim[k + 1] = y else: sim = np.atleast_2d(initial_simplex).copy() dtype = sim.dtype if np.issubdtype(sim.dtype, np.inexact) else np.float64 sim = np.asarray(sim, dtype=dtype) if sim.ndim != 2 or sim.shape[0] != sim.shape[1] + 1: raise ValueError("`initial_simplex` should be an array of shape (N+1,N)") if len(x0) != sim.shape[1]: raise ValueError("Size of `initial_simplex` is not consistent with `x0`") N = sim.shape[1] if retall: allvecs = [sim[0]] # If neither are set, then set both to default if maxiter is None and maxfun is None: maxiter = N * 200 maxfun = N * 200 elif maxiter is None: # Convert remaining Nones, to np.inf, unless the other is np.inf, in # which case use the default to avoid unbounded iteration if maxfun == np.inf: maxiter = N * 200 else: maxiter = np.inf elif maxfun is None: if maxiter == np.inf: maxfun = N * 200 else: maxfun = np.inf if bounds is not None: # The default simplex construction may make all entries (for a given # parameter) greater than an upper bound if x0 is very close to the # upper bound. If one simply clips the simplex to the bounds this could # make the simplex entries degenerate. If that occurs reflect into the # interior. msk = sim > upper_bound # reflect into the interior sim = np.where(msk, 2*upper_bound - sim, sim) # but make sure the reflection is no less than the lower_bound sim = np.clip(sim, lower_bound, upper_bound) one2np1 = list(range(1, N + 1)) fsim = np.full((N + 1,), np.inf, dtype=float) fcalls, func = _wrap_scalar_function_maxfun_validation(func, args, maxfun) try: for k in range(N + 1): fsim[k] = func(sim[k]) except _MaxFuncCallError: pass finally: ind = np.argsort(fsim) sim = np.take(sim, ind, 0) fsim = np.take(fsim, ind, 0) ind = np.argsort(fsim) fsim = np.take(fsim, ind, 0) # sort so sim[0,:] has the lowest function value sim = np.take(sim, ind, 0) iterations = 1 while (fcalls[0] < maxfun and iterations < maxiter): try: if (np.max(np.ravel(np.abs(sim[1:] - sim[0]))) <= xatol and np.max(np.abs(fsim[0] - fsim[1:])) <= fatol): break xbar = np.add.reduce(sim[:-1], 0) / N xr = (1 + rho) * xbar - rho * sim[-1] if bounds is not None: xr = np.clip(xr, lower_bound, upper_bound) fxr = func(xr) doshrink = 0 if fxr < fsim[0]: xe = (1 + rho * chi) * xbar - rho * chi * sim[-1] if bounds is not None: xe = np.clip(xe, lower_bound, upper_bound) fxe = func(xe) if fxe < fxr: sim[-1] = xe fsim[-1] = fxe else: sim[-1] = xr fsim[-1] = fxr else: # fsim[0] <= fxr if fxr < fsim[-2]: sim[-1] = xr fsim[-1] = fxr else: # fxr >= fsim[-2] # Perform contraction if fxr < fsim[-1]: xc = (1 + psi * rho) * xbar - psi * rho * sim[-1] if bounds is not None: xc = np.clip(xc, lower_bound, upper_bound) fxc = func(xc) if fxc <= fxr: sim[-1] = xc fsim[-1] = fxc else: doshrink = 1 else: # Perform an inside contraction xcc = (1 - psi) * xbar + psi * sim[-1] if bounds is not None: xcc = np.clip(xcc, lower_bound, upper_bound) fxcc = func(xcc) if fxcc < fsim[-1]: sim[-1] = xcc fsim[-1] = fxcc else: doshrink = 1 if doshrink: for j in one2np1: sim[j] = sim[0] + sigma * (sim[j] - sim[0]) if bounds is not None: sim[j] = np.clip( sim[j], lower_bound, upper_bound) fsim[j] = func(sim[j]) iterations += 1 except _MaxFuncCallError: pass finally: ind = np.argsort(fsim) sim = np.take(sim, ind, 0) fsim = np.take(fsim, ind, 0) if retall: allvecs.append(sim[0]) intermediate_result = OptimizeResult(x=sim[0], fun=fsim[0]) if _call_callback_maybe_halt(callback, intermediate_result): break x = sim[0] fval = np.min(fsim) warnflag = 0 if fcalls[0] >= maxfun: warnflag = 1 msg = _status_message['maxfev'] if disp: warnings.warn(msg, RuntimeWarning, stacklevel=3) elif iterations >= maxiter: warnflag = 2 msg = _status_message['maxiter'] if disp: warnings.warn(msg, RuntimeWarning, stacklevel=3) else: msg = _status_message['success'] if disp: print(msg) print(" Current function value: %f" % fval) print(" Iterations: %d" % iterations) print(" Function evaluations: %d" % fcalls[0]) result = OptimizeResult(fun=fval, nit=iterations, nfev=fcalls[0], status=warnflag, success=(warnflag == 0), message=msg, x=x, final_simplex=(sim, fsim)) if retall: result['allvecs'] = allvecs return result def approx_fprime(xk, f, epsilon=_epsilon, *args): """Finite difference approximation of the derivatives of a scalar or vector-valued function. If a function maps from :math:`R^n` to :math:`R^m`, its derivatives form an m-by-n matrix called the Jacobian, where an element :math:`(i, j)` is a partial derivative of f[i] with respect to ``xk[j]``. Parameters ---------- xk : array_like The coordinate vector at which to determine the gradient of `f`. f : callable Function of which to estimate the derivatives of. Has the signature ``f(xk, *args)`` where `xk` is the argument in the form of a 1-D array and `args` is a tuple of any additional fixed parameters needed to completely specify the function. The argument `xk` passed to this function is an ndarray of shape (n,) (never a scalar even if n=1). It must return a 1-D array_like of shape (m,) or a scalar. .. versionchanged:: 1.9.0 `f` is now able to return a 1-D array-like, with the :math:`(m, n)` Jacobian being estimated. epsilon : {float, array_like}, optional Increment to `xk` to use for determining the function gradient. If a scalar, uses the same finite difference delta for all partial derivatives. If an array, should contain one value per element of `xk`. Defaults to ``sqrt(np.finfo(float).eps)``, which is approximately 1.49e-08. \\*args : args, optional Any other arguments that are to be passed to `f`. Returns ------- jac : ndarray The partial derivatives of `f` to `xk`. See Also -------- check_grad : Check correctness of gradient function against approx_fprime. Notes ----- The function gradient is determined by the forward finite difference formula:: f(xk[i] + epsilon[i]) - f(xk[i]) f'[i] = --------------------------------- epsilon[i] Examples -------- >>> import numpy as np >>> from scipy import optimize >>> def func(x, c0, c1): ... "Coordinate vector `x` should be an array of size two." ... return c0 * x[0]**2 + c1*x[1]**2 >>> x = np.ones(2) >>> c0, c1 = (1, 200) >>> eps = np.sqrt(np.finfo(float).eps) >>> optimize.approx_fprime(x, func, [eps, np.sqrt(200) * eps], c0, c1) array([ 2. , 400.00004198]) """ xk = np.asarray(xk, float) f0 = f(xk, *args) return approx_derivative(f, xk, method='2-point', abs_step=epsilon, args=args, f0=f0) def check_grad(func, grad, x0, *args, epsilon=_epsilon, direction='all', seed=None): """Check the correctness of a gradient function by comparing it against a (forward) finite-difference approximation of the gradient. Parameters ---------- func : callable ``func(x0, *args)`` Function whose derivative is to be checked. grad : callable ``grad(x0, *args)`` Jacobian of `func`. x0 : ndarray Points to check `grad` against forward difference approximation of grad using `func`. args : \\*args, optional Extra arguments passed to `func` and `grad`. epsilon : float, optional Step size used for the finite difference approximation. It defaults to ``sqrt(np.finfo(float).eps)``, which is approximately 1.49e-08. direction : str, optional If set to ``'random'``, then gradients along a random vector are used to check `grad` against forward difference approximation using `func`. By default it is ``'all'``, in which case, all the one hot direction vectors are considered to check `grad`. If `func` is a vector valued function then only ``'all'`` can be used. seed : {None, int, `numpy.random.Generator`, `numpy.random.RandomState`}, optional If `seed` is None (or `np.random`), the `numpy.random.RandomState` singleton is used. If `seed` is an int, a new ``RandomState`` instance is used, seeded with `seed`. If `seed` is already a ``Generator`` or ``RandomState`` instance then that instance is used. Specify `seed` for reproducing the return value from this function. The random numbers generated with this seed affect the random vector along which gradients are computed to check ``grad``. Note that `seed` is only used when `direction` argument is set to `'random'`. Returns ------- err : float The square root of the sum of squares (i.e., the 2-norm) of the difference between ``grad(x0, *args)`` and the finite difference approximation of `grad` using func at the points `x0`. See Also -------- approx_fprime Examples -------- >>> import numpy as np >>> def func(x): ... return x[0]**2 - 0.5 * x[1]**3 >>> def grad(x): ... return [2 * x[0], -1.5 * x[1]**2] >>> from scipy.optimize import check_grad >>> check_grad(func, grad, [1.5, -1.5]) 2.9802322387695312e-08 # may vary >>> rng = np.random.default_rng() >>> check_grad(func, grad, [1.5, -1.5], ... direction='random', seed=rng) 2.9802322387695312e-08 """ step = epsilon x0 = np.asarray(x0) def g(w, func, x0, v, *args): return func(x0 + w*v, *args) if direction == 'random': _grad = np.asanyarray(grad(x0, *args)) if _grad.ndim > 1: raise ValueError("'random' can only be used with scalar valued" " func") random_state = check_random_state(seed) v = random_state.normal(0, 1, size=(x0.shape)) _args = (func, x0, v) + args _func = g vars = np.zeros((1,)) analytical_grad = np.dot(_grad, v) elif direction == 'all': _args = args _func = func vars = x0 analytical_grad = grad(x0, *args) else: raise ValueError(f"{direction} is not a valid string for " "``direction`` argument") return np.sqrt(np.sum(np.abs( (analytical_grad - approx_fprime(vars, _func, step, *_args))**2 ))) def approx_fhess_p(x0, p, fprime, epsilon, *args): # calculate fprime(x0) first, as this may be cached by ScalarFunction f1 = fprime(*((x0,) + args)) f2 = fprime(*((x0 + epsilon*p,) + args)) return (f2 - f1) / epsilon class _LineSearchError(RuntimeError): pass def _line_search_wolfe12(f, fprime, xk, pk, gfk, old_fval, old_old_fval, **kwargs): """ Same as line_search_wolfe1, but fall back to line_search_wolfe2 if suitable step length is not found, and raise an exception if a suitable step length is not found. Raises ------ _LineSearchError If no suitable step size is found """ extra_condition = kwargs.pop('extra_condition', None) ret = line_search_wolfe1(f, fprime, xk, pk, gfk, old_fval, old_old_fval, **kwargs) if ret[0] is not None and extra_condition is not None: xp1 = xk + ret[0] * pk if not extra_condition(ret[0], xp1, ret[3], ret[5]): # Reject step if extra_condition fails ret = (None,) if ret[0] is None: # line search failed: try different one. with warnings.catch_warnings(): warnings.simplefilter('ignore', LineSearchWarning) kwargs2 = {} for key in ('c1', 'c2', 'amax'): if key in kwargs: kwargs2[key] = kwargs[key] ret = line_search_wolfe2(f, fprime, xk, pk, gfk, old_fval, old_old_fval, extra_condition=extra_condition, **kwargs2) if ret[0] is None: raise _LineSearchError() return ret def fmin_bfgs(f, x0, fprime=None, args=(), gtol=1e-5, norm=np.inf, epsilon=_epsilon, maxiter=None, full_output=0, disp=1, retall=0, callback=None, xrtol=0, c1=1e-4, c2=0.9, hess_inv0=None): """ Minimize a function using the BFGS algorithm. Parameters ---------- f : callable ``f(x,*args)`` Objective function to be minimized. x0 : ndarray Initial guess, shape (n,) fprime : callable ``f'(x,*args)``, optional Gradient of f. args : tuple, optional Extra arguments passed to f and fprime. gtol : float, optional Terminate successfully if gradient norm is less than `gtol` norm : float, optional Order of norm (Inf is max, -Inf is min) epsilon : int or ndarray, optional If `fprime` is approximated, use this value for the step size. callback : callable, optional An optional user-supplied function to call after each iteration. Called as ``callback(xk)``, where ``xk`` is the current parameter vector. maxiter : int, optional Maximum number of iterations to perform. full_output : bool, optional If True, return ``fopt``, ``func_calls``, ``grad_calls``, and ``warnflag`` in addition to ``xopt``. disp : bool, optional Print convergence message if True. retall : bool, optional Return a list of results at each iteration if True. xrtol : float, default: 0 Relative tolerance for `x`. Terminate successfully if step size is less than ``xk * xrtol`` where ``xk`` is the current parameter vector. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.9 Parameter for curvature condition rule. hess_inv0 : None or ndarray, optional`` Initial inverse hessian estimate, shape (n, n). If None (default) then the identity matrix is used. Returns ------- xopt : ndarray Parameters which minimize f, i.e., ``f(xopt) == fopt``. fopt : float Minimum value. gopt : ndarray Value of gradient at minimum, f'(xopt), which should be near 0. Bopt : ndarray Value of 1/f''(xopt), i.e., the inverse Hessian matrix. func_calls : int Number of function_calls made. grad_calls : int Number of gradient calls made. warnflag : integer 1 : Maximum number of iterations exceeded. 2 : Gradient and/or function calls not changing. 3 : NaN result encountered. allvecs : list The value of `xopt` at each iteration. Only returned if `retall` is True. Notes ----- Optimize the function, `f`, whose gradient is given by `fprime` using the quasi-Newton method of Broyden, Fletcher, Goldfarb, and Shanno (BFGS). Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. See Also -------- minimize: Interface to minimization algorithms for multivariate functions. See ``method='BFGS'`` in particular. References ---------- Wright, and Nocedal 'Numerical Optimization', 1999, p. 198. Examples -------- >>> import numpy as np >>> from scipy.optimize import fmin_bfgs >>> def quadratic_cost(x, Q): ... return x @ Q @ x ... >>> x0 = np.array([-3, -4]) >>> cost_weight = np.diag([1., 10.]) >>> # Note that a trailing comma is necessary for a tuple with single element >>> fmin_bfgs(quadratic_cost, x0, args=(cost_weight,)) Optimization terminated successfully. Current function value: 0.000000 Iterations: 7 # may vary Function evaluations: 24 # may vary Gradient evaluations: 8 # may vary array([ 2.85169950e-06, -4.61820139e-07]) >>> def quadratic_cost_grad(x, Q): ... return 2 * Q @ x ... >>> fmin_bfgs(quadratic_cost, x0, quadratic_cost_grad, args=(cost_weight,)) Optimization terminated successfully. Current function value: 0.000000 Iterations: 7 Function evaluations: 8 Gradient evaluations: 8 array([ 2.85916637e-06, -4.54371951e-07]) """ opts = {'gtol': gtol, 'norm': norm, 'eps': epsilon, 'disp': disp, 'maxiter': maxiter, 'return_all': retall, 'xrtol': xrtol, 'c1': c1, 'c2': c2, 'hess_inv0': hess_inv0} callback = _wrap_callback(callback) res = _minimize_bfgs(f, x0, args, fprime, callback=callback, **opts) if full_output: retlist = (res['x'], res['fun'], res['jac'], res['hess_inv'], res['nfev'], res['njev'], res['status']) if retall: retlist += (res['allvecs'], ) return retlist else: if retall: return res['x'], res['allvecs'] else: return res['x'] def _minimize_bfgs(fun, x0, args=(), jac=None, callback=None, gtol=1e-5, norm=np.inf, eps=_epsilon, maxiter=None, disp=False, return_all=False, finite_diff_rel_step=None, xrtol=0, c1=1e-4, c2=0.9, hess_inv0=None, **unknown_options): """ Minimization of scalar function of one or more variables using the BFGS algorithm. Options ------- disp : bool Set to True to print convergence messages. maxiter : int Maximum number of iterations to perform. gtol : float Terminate successfully if gradient norm is less than `gtol`. norm : float Order of norm (Inf is max, -Inf is min). eps : float or ndarray If `jac is None` the absolute step size used for numerical approximation of the jacobian via forward differences. return_all : bool, optional Set to True to return a list of the best solution at each of the iterations. finite_diff_rel_step : None or array_like, optional If `jac in ['2-point', '3-point', 'cs']` the relative step size to use for numerical approximation of the jacobian. The absolute step size is computed as ``h = rel_step * sign(x) * max(1, abs(x))``, possibly adjusted to fit into the bounds. For ``jac='3-point'`` the sign of `h` is ignored. If None (default) then step is selected automatically. xrtol : float, default: 0 Relative tolerance for `x`. Terminate successfully if step size is less than ``xk * xrtol`` where ``xk`` is the current parameter vector. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.9 Parameter for curvature condition rule. hess_inv0 : None or ndarray, optional Initial inverse hessian estimate, shape (n, n). If None (default) then the identity matrix is used. Notes ----- Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. If minimization doesn't complete successfully, with an error message of ``Desired error not necessarily achieved due to precision loss``, then consider setting `gtol` to a higher value. This precision loss typically occurs when the (finite difference) numerical differentiation cannot provide sufficient precision to satisfy the `gtol` termination criterion. This can happen when working in single precision and a callable jac is not provided. For single precision problems a `gtol` of 1e-3 seems to work. """ _check_unknown_options(unknown_options) _check_positive_definite(hess_inv0) retall = return_all x0 = asarray(x0).flatten() if x0.ndim == 0: x0.shape = (1,) if maxiter is None: maxiter = len(x0) * 200 sf = _prepare_scalar_function(fun, x0, jac, args=args, epsilon=eps, finite_diff_rel_step=finite_diff_rel_step) f = sf.fun myfprime = sf.grad old_fval = f(x0) gfk = myfprime(x0) k = 0 N = len(x0) I = np.eye(N, dtype=int) Hk = I if hess_inv0 is None else hess_inv0 # Sets the initial step guess to dx ~ 1 old_old_fval = old_fval + np.linalg.norm(gfk) / 2 xk = x0 if retall: allvecs = [x0] warnflag = 0 gnorm = vecnorm(gfk, ord=norm) while (gnorm > gtol) and (k < maxiter): pk = -np.dot(Hk, gfk) try: alpha_k, fc, gc, old_fval, old_old_fval, gfkp1 = \ _line_search_wolfe12(f, myfprime, xk, pk, gfk, old_fval, old_old_fval, amin=1e-100, amax=1e100, c1=c1, c2=c2) except _LineSearchError: # Line search failed to find a better solution. warnflag = 2 break sk = alpha_k * pk xkp1 = xk + sk if retall: allvecs.append(xkp1) xk = xkp1 if gfkp1 is None: gfkp1 = myfprime(xkp1) yk = gfkp1 - gfk gfk = gfkp1 k += 1 intermediate_result = OptimizeResult(x=xk, fun=old_fval) if _call_callback_maybe_halt(callback, intermediate_result): break gnorm = vecnorm(gfk, ord=norm) if (gnorm <= gtol): break # See Chapter 5 in P.E. Frandsen, K. Jonasson, H.B. Nielsen, # O. Tingleff: "Unconstrained Optimization", IMM, DTU. 1999. # These notes are available here: # http://www2.imm.dtu.dk/documents/ftp/publlec.html if (alpha_k*vecnorm(pk) <= xrtol*(xrtol + vecnorm(xk))): break if not np.isfinite(old_fval): # We correctly found +-Inf as optimal value, or something went # wrong. warnflag = 2 break rhok_inv = np.dot(yk, sk) # this was handled in numeric, let it remains for more safety # Cryptic comment above is preserved for posterity. Future reader: # consider change to condition below proposed in gh-1261/gh-17345. if rhok_inv == 0.: rhok = 1000.0 if disp: msg = "Divide-by-zero encountered: rhok assumed large" _print_success_message_or_warn(True, msg) else: rhok = 1. / rhok_inv A1 = I - sk[:, np.newaxis] * yk[np.newaxis, :] * rhok A2 = I - yk[:, np.newaxis] * sk[np.newaxis, :] * rhok Hk = np.dot(A1, np.dot(Hk, A2)) + (rhok * sk[:, np.newaxis] * sk[np.newaxis, :]) fval = old_fval if warnflag == 2: msg = _status_message['pr_loss'] elif k >= maxiter: warnflag = 1 msg = _status_message['maxiter'] elif np.isnan(gnorm) or np.isnan(fval) or np.isnan(xk).any(): warnflag = 3 msg = _status_message['nan'] else: msg = _status_message['success'] if disp: _print_success_message_or_warn(warnflag, msg) print(" Current function value: %f" % fval) print(" Iterations: %d" % k) print(" Function evaluations: %d" % sf.nfev) print(" Gradient evaluations: %d" % sf.ngev) result = OptimizeResult(fun=fval, jac=gfk, hess_inv=Hk, nfev=sf.nfev, njev=sf.ngev, status=warnflag, success=(warnflag == 0), message=msg, x=xk, nit=k) if retall: result['allvecs'] = allvecs return result def _print_success_message_or_warn(warnflag, message, warntype=None): if not warnflag: print(message) else: warnings.warn(message, warntype or OptimizeWarning, stacklevel=3) def fmin_cg(f, x0, fprime=None, args=(), gtol=1e-5, norm=np.inf, epsilon=_epsilon, maxiter=None, full_output=0, disp=1, retall=0, callback=None, c1=1e-4, c2=0.4): """ Minimize a function using a nonlinear conjugate gradient algorithm. Parameters ---------- f : callable, ``f(x, *args)`` Objective function to be minimized. Here `x` must be a 1-D array of the variables that are to be changed in the search for a minimum, and `args` are the other (fixed) parameters of `f`. x0 : ndarray A user-supplied initial estimate of `xopt`, the optimal value of `x`. It must be a 1-D array of values. fprime : callable, ``fprime(x, *args)``, optional A function that returns the gradient of `f` at `x`. Here `x` and `args` are as described above for `f`. The returned value must be a 1-D array. Defaults to None, in which case the gradient is approximated numerically (see `epsilon`, below). args : tuple, optional Parameter values passed to `f` and `fprime`. Must be supplied whenever additional fixed parameters are needed to completely specify the functions `f` and `fprime`. gtol : float, optional Stop when the norm of the gradient is less than `gtol`. norm : float, optional Order to use for the norm of the gradient (``-np.inf`` is min, ``np.inf`` is max). epsilon : float or ndarray, optional Step size(s) to use when `fprime` is approximated numerically. Can be a scalar or a 1-D array. Defaults to ``sqrt(eps)``, with eps the floating point machine precision. Usually ``sqrt(eps)`` is about 1.5e-8. maxiter : int, optional Maximum number of iterations to perform. Default is ``200 * len(x0)``. full_output : bool, optional If True, return `fopt`, `func_calls`, `grad_calls`, and `warnflag` in addition to `xopt`. See the Returns section below for additional information on optional return values. disp : bool, optional If True, return a convergence message, followed by `xopt`. retall : bool, optional If True, add to the returned values the results of each iteration. callback : callable, optional An optional user-supplied function, called after each iteration. Called as ``callback(xk)``, where ``xk`` is the current value of `x0`. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.4 Parameter for curvature condition rule. Returns ------- xopt : ndarray Parameters which minimize f, i.e., ``f(xopt) == fopt``. fopt : float, optional Minimum value found, f(xopt). Only returned if `full_output` is True. func_calls : int, optional The number of function_calls made. Only returned if `full_output` is True. grad_calls : int, optional The number of gradient calls made. Only returned if `full_output` is True. warnflag : int, optional Integer value with warning status, only returned if `full_output` is True. 0 : Success. 1 : The maximum number of iterations was exceeded. 2 : Gradient and/or function calls were not changing. May indicate that precision was lost, i.e., the routine did not converge. 3 : NaN result encountered. allvecs : list of ndarray, optional List of arrays, containing the results at each iteration. Only returned if `retall` is True. See Also -------- minimize : common interface to all `scipy.optimize` algorithms for unconstrained and constrained minimization of multivariate functions. It provides an alternative way to call ``fmin_cg``, by specifying ``method='CG'``. Notes ----- This conjugate gradient algorithm is based on that of Polak and Ribiere [1]_. Conjugate gradient methods tend to work better when: 1. `f` has a unique global minimizing point, and no local minima or other stationary points, 2. `f` is, at least locally, reasonably well approximated by a quadratic function of the variables, 3. `f` is continuous and has a continuous gradient, 4. `fprime` is not too large, e.g., has a norm less than 1000, 5. The initial guess, `x0`, is reasonably close to `f` 's global minimizing point, `xopt`. Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. References ---------- .. [1] Wright & Nocedal, "Numerical Optimization", 1999, pp. 120-122. Examples -------- Example 1: seek the minimum value of the expression ``a*u**2 + b*u*v + c*v**2 + d*u + e*v + f`` for given values of the parameters and an initial guess ``(u, v) = (0, 0)``. >>> import numpy as np >>> args = (2, 3, 7, 8, 9, 10) # parameter values >>> def f(x, *args): ... u, v = x ... a, b, c, d, e, f = args ... return a*u**2 + b*u*v + c*v**2 + d*u + e*v + f >>> def gradf(x, *args): ... u, v = x ... a, b, c, d, e, f = args ... gu = 2*a*u + b*v + d # u-component of the gradient ... gv = b*u + 2*c*v + e # v-component of the gradient ... return np.asarray((gu, gv)) >>> x0 = np.asarray((0, 0)) # Initial guess. >>> from scipy import optimize >>> res1 = optimize.fmin_cg(f, x0, fprime=gradf, args=args) Optimization terminated successfully. Current function value: 1.617021 Iterations: 4 Function evaluations: 8 Gradient evaluations: 8 >>> res1 array([-1.80851064, -0.25531915]) Example 2: solve the same problem using the `minimize` function. (This `myopts` dictionary shows all of the available options, although in practice only non-default values would be needed. The returned value will be a dictionary.) >>> opts = {'maxiter' : None, # default value. ... 'disp' : True, # non-default value. ... 'gtol' : 1e-5, # default value. ... 'norm' : np.inf, # default value. ... 'eps' : 1.4901161193847656e-08} # default value. >>> res2 = optimize.minimize(f, x0, jac=gradf, args=args, ... method='CG', options=opts) Optimization terminated successfully. Current function value: 1.617021 Iterations: 4 Function evaluations: 8 Gradient evaluations: 8 >>> res2.x # minimum found array([-1.80851064, -0.25531915]) """ opts = {'gtol': gtol, 'norm': norm, 'eps': epsilon, 'disp': disp, 'maxiter': maxiter, 'return_all': retall} callback = _wrap_callback(callback) res = _minimize_cg(f, x0, args, fprime, callback=callback, c1=c1, c2=c2, **opts) if full_output: retlist = res['x'], res['fun'], res['nfev'], res['njev'], res['status'] if retall: retlist += (res['allvecs'], ) return retlist else: if retall: return res['x'], res['allvecs'] else: return res['x'] def _minimize_cg(fun, x0, args=(), jac=None, callback=None, gtol=1e-5, norm=np.inf, eps=_epsilon, maxiter=None, disp=False, return_all=False, finite_diff_rel_step=None, c1=1e-4, c2=0.4, **unknown_options): """ Minimization of scalar function of one or more variables using the conjugate gradient algorithm. Options ------- disp : bool Set to True to print convergence messages. maxiter : int Maximum number of iterations to perform. gtol : float Gradient norm must be less than `gtol` before successful termination. norm : float Order of norm (Inf is max, -Inf is min). eps : float or ndarray If `jac is None` the absolute step size used for numerical approximation of the jacobian via forward differences. return_all : bool, optional Set to True to return a list of the best solution at each of the iterations. finite_diff_rel_step : None or array_like, optional If `jac in ['2-point', '3-point', 'cs']` the relative step size to use for numerical approximation of the jacobian. The absolute step size is computed as ``h = rel_step * sign(x) * max(1, abs(x))``, possibly adjusted to fit into the bounds. For ``jac='3-point'`` the sign of `h` is ignored. If None (default) then step is selected automatically. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.4 Parameter for curvature condition rule. Notes ----- Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. """ _check_unknown_options(unknown_options) retall = return_all x0 = asarray(x0).flatten() if maxiter is None: maxiter = len(x0) * 200 sf = _prepare_scalar_function(fun, x0, jac=jac, args=args, epsilon=eps, finite_diff_rel_step=finite_diff_rel_step) f = sf.fun myfprime = sf.grad old_fval = f(x0) gfk = myfprime(x0) k = 0 xk = x0 # Sets the initial step guess to dx ~ 1 old_old_fval = old_fval + np.linalg.norm(gfk) / 2 if retall: allvecs = [xk] warnflag = 0 pk = -gfk gnorm = vecnorm(gfk, ord=norm) sigma_3 = 0.01 while (gnorm > gtol) and (k < maxiter): deltak = np.dot(gfk, gfk) cached_step = [None] def polak_ribiere_powell_step(alpha, gfkp1=None): xkp1 = xk + alpha * pk if gfkp1 is None: gfkp1 = myfprime(xkp1) yk = gfkp1 - gfk beta_k = max(0, np.dot(yk, gfkp1) / deltak) pkp1 = -gfkp1 + beta_k * pk gnorm = vecnorm(gfkp1, ord=norm) return (alpha, xkp1, pkp1, gfkp1, gnorm) def descent_condition(alpha, xkp1, fp1, gfkp1): # Polak-Ribiere+ needs an explicit check of a sufficient # descent condition, which is not guaranteed by strong Wolfe. # # See Gilbert & Nocedal, "Global convergence properties of # conjugate gradient methods for optimization", # SIAM J. Optimization 2, 21 (1992). cached_step[:] = polak_ribiere_powell_step(alpha, gfkp1) alpha, xk, pk, gfk, gnorm = cached_step # Accept step if it leads to convergence. if gnorm <= gtol: return True # Accept step if sufficient descent condition applies. return np.dot(pk, gfk) <= -sigma_3 * np.dot(gfk, gfk) try: alpha_k, fc, gc, old_fval, old_old_fval, gfkp1 = \ _line_search_wolfe12(f, myfprime, xk, pk, gfk, old_fval, old_old_fval, c1=c1, c2=c2, amin=1e-100, amax=1e100, extra_condition=descent_condition) except _LineSearchError: # Line search failed to find a better solution. warnflag = 2 break # Reuse already computed results if possible if alpha_k == cached_step[0]: alpha_k, xk, pk, gfk, gnorm = cached_step else: alpha_k, xk, pk, gfk, gnorm = polak_ribiere_powell_step(alpha_k, gfkp1) if retall: allvecs.append(xk) k += 1 intermediate_result = OptimizeResult(x=xk, fun=old_fval) if _call_callback_maybe_halt(callback, intermediate_result): break fval = old_fval if warnflag == 2: msg = _status_message['pr_loss'] elif k >= maxiter: warnflag = 1 msg = _status_message['maxiter'] elif np.isnan(gnorm) or np.isnan(fval) or np.isnan(xk).any(): warnflag = 3 msg = _status_message['nan'] else: msg = _status_message['success'] if disp: _print_success_message_or_warn(warnflag, msg) print(" Current function value: %f" % fval) print(" Iterations: %d" % k) print(" Function evaluations: %d" % sf.nfev) print(" Gradient evaluations: %d" % sf.ngev) result = OptimizeResult(fun=fval, jac=gfk, nfev=sf.nfev, njev=sf.ngev, status=warnflag, success=(warnflag == 0), message=msg, x=xk, nit=k) if retall: result['allvecs'] = allvecs return result def fmin_ncg(f, x0, fprime, fhess_p=None, fhess=None, args=(), avextol=1e-5, epsilon=_epsilon, maxiter=None, full_output=0, disp=1, retall=0, callback=None, c1=1e-4, c2=0.9): """ Unconstrained minimization of a function using the Newton-CG method. Parameters ---------- f : callable ``f(x, *args)`` Objective function to be minimized. x0 : ndarray Initial guess. fprime : callable ``f'(x, *args)`` Gradient of f. fhess_p : callable ``fhess_p(x, p, *args)``, optional Function which computes the Hessian of f times an arbitrary vector, p. fhess : callable ``fhess(x, *args)``, optional Function to compute the Hessian matrix of f. args : tuple, optional Extra arguments passed to f, fprime, fhess_p, and fhess (the same set of extra arguments is supplied to all of these functions). epsilon : float or ndarray, optional If fhess is approximated, use this value for the step size. callback : callable, optional An optional user-supplied function which is called after each iteration. Called as callback(xk), where xk is the current parameter vector. avextol : float, optional Convergence is assumed when the average relative error in the minimizer falls below this amount. maxiter : int, optional Maximum number of iterations to perform. full_output : bool, optional If True, return the optional outputs. disp : bool, optional If True, print convergence message. retall : bool, optional If True, return a list of results at each iteration. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.9 Parameter for curvature condition rule Returns ------- xopt : ndarray Parameters which minimize f, i.e., ``f(xopt) == fopt``. fopt : float Value of the function at xopt, i.e., ``fopt = f(xopt)``. fcalls : int Number of function calls made. gcalls : int Number of gradient calls made. hcalls : int Number of Hessian calls made. warnflag : int Warnings generated by the algorithm. 1 : Maximum number of iterations exceeded. 2 : Line search failure (precision loss). 3 : NaN result encountered. allvecs : list The result at each iteration, if retall is True (see below). See also -------- minimize: Interface to minimization algorithms for multivariate functions. See the 'Newton-CG' `method` in particular. Notes ----- Only one of `fhess_p` or `fhess` need to be given. If `fhess` is provided, then `fhess_p` will be ignored. If neither `fhess` nor `fhess_p` is provided, then the hessian product will be approximated using finite differences on `fprime`. `fhess_p` must compute the hessian times an arbitrary vector. If it is not given, finite-differences on `fprime` are used to compute it. Newton-CG methods are also called truncated Newton methods. This function differs from scipy.optimize.fmin_tnc because 1. scipy.optimize.fmin_ncg is written purely in Python using NumPy and scipy while scipy.optimize.fmin_tnc calls a C function. 2. scipy.optimize.fmin_ncg is only for unconstrained minimization while scipy.optimize.fmin_tnc is for unconstrained minimization or box constrained minimization. (Box constraints give lower and upper bounds for each variable separately.) Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. References ---------- Wright & Nocedal, 'Numerical Optimization', 1999, p. 140. """ opts = {'xtol': avextol, 'eps': epsilon, 'maxiter': maxiter, 'disp': disp, 'return_all': retall} callback = _wrap_callback(callback) res = _minimize_newtoncg(f, x0, args, fprime, fhess, fhess_p, callback=callback, c1=c1, c2=c2, **opts) if full_output: retlist = (res['x'], res['fun'], res['nfev'], res['njev'], res['nhev'], res['status']) if retall: retlist += (res['allvecs'], ) return retlist else: if retall: return res['x'], res['allvecs'] else: return res['x'] def _minimize_newtoncg(fun, x0, args=(), jac=None, hess=None, hessp=None, callback=None, xtol=1e-5, eps=_epsilon, maxiter=None, disp=False, return_all=False, c1=1e-4, c2=0.9, **unknown_options): """ Minimization of scalar function of one or more variables using the Newton-CG algorithm. Note that the `jac` parameter (Jacobian) is required. Options ------- disp : bool Set to True to print convergence messages. xtol : float Average relative error in solution `xopt` acceptable for convergence. maxiter : int Maximum number of iterations to perform. eps : float or ndarray If `hessp` is approximated, use this value for the step size. return_all : bool, optional Set to True to return a list of the best solution at each of the iterations. c1 : float, default: 1e-4 Parameter for Armijo condition rule. c2 : float, default: 0.9 Parameter for curvature condition rule. Notes ----- Parameters `c1` and `c2` must satisfy ``0 < c1 < c2 < 1``. """ _check_unknown_options(unknown_options) if jac is None: raise ValueError('Jacobian is required for Newton-CG method') fhess_p = hessp fhess = hess avextol = xtol epsilon = eps retall = return_all x0 = asarray(x0).flatten() # TODO: add hessp (callable or FD) to ScalarFunction? sf = _prepare_scalar_function( fun, x0, jac, args=args, epsilon=eps, hess=hess ) f = sf.fun fprime = sf.grad _h = sf.hess(x0) # Logic for hess/hessp # - If a callable(hess) is provided, then use that # - If hess is a FD_METHOD, or the output from hess(x) is a LinearOperator # then create a hessp function using those. # - If hess is None but you have callable(hessp) then use the hessp. # - If hess and hessp are None then approximate hessp using the grad/jac. if (hess in FD_METHODS or isinstance(_h, LinearOperator)): fhess = None def _hessp(x, p, *args): return sf.hess(x).dot(p) fhess_p = _hessp def terminate(warnflag, msg): if disp: _print_success_message_or_warn(warnflag, msg) print(" Current function value: %f" % old_fval) print(" Iterations: %d" % k) print(" Function evaluations: %d" % sf.nfev) print(" Gradient evaluations: %d" % sf.ngev) print(" Hessian evaluations: %d" % hcalls) fval = old_fval result = OptimizeResult(fun=fval, jac=gfk, nfev=sf.nfev, njev=sf.ngev, nhev=hcalls, status=warnflag, success=(warnflag == 0), message=msg, x=xk, nit=k) if retall: result['allvecs'] = allvecs return result hcalls = 0 if maxiter is None: maxiter = len(x0)*200 cg_maxiter = 20*len(x0) xtol = len(x0) * avextol # Make sure we enter the while loop. update_l1norm = np.finfo(float).max xk = np.copy(x0) if retall: allvecs = [xk] k = 0 gfk = None old_fval = f(x0) old_old_fval = None float64eps = np.finfo(np.float64).eps while update_l1norm > xtol: if k >= maxiter: msg = "Warning: " + _status_message['maxiter'] return terminate(1, msg) # Compute a search direction pk by applying the CG method to # del2 f(xk) p = - grad f(xk) starting from 0. b = -fprime(xk) maggrad = np.linalg.norm(b, ord=1) eta = min(0.5, math.sqrt(maggrad)) termcond = eta * maggrad xsupi = zeros(len(x0), dtype=x0.dtype) ri = -b psupi = -ri i = 0 dri0 = np.dot(ri, ri) if fhess is not None: # you want to compute hessian once. A = sf.hess(xk) hcalls += 1 for k2 in range(cg_maxiter): if np.add.reduce(np.abs(ri)) <= termcond: break if fhess is None: if fhess_p is None: Ap = approx_fhess_p(xk, psupi, fprime, epsilon) else: Ap = fhess_p(xk, psupi, *args) hcalls += 1 else: # hess was supplied as a callable or hessian update strategy, so # A is a dense numpy array or sparse matrix Ap = A.dot(psupi) # check curvature Ap = asarray(Ap).squeeze() # get rid of matrices... curv = np.dot(psupi, Ap) if 0 <= curv <= 3 * float64eps: break elif curv < 0: if (i > 0): break else: # fall back to steepest descent direction xsupi = dri0 / (-curv) * b break alphai = dri0 / curv xsupi += alphai * psupi ri += alphai * Ap dri1 = np.dot(ri, ri) betai = dri1 / dri0 psupi = -ri + betai * psupi i += 1 dri0 = dri1 # update np.dot(ri,ri) for next time. else: # curvature keeps increasing, bail out msg = ("Warning: CG iterations didn't converge. The Hessian is not " "positive definite.") return terminate(3, msg) pk = xsupi # search direction is solution to system. gfk = -b # gradient at xk try: alphak, fc, gc, old_fval, old_old_fval, gfkp1 = \ _line_search_wolfe12(f, fprime, xk, pk, gfk, old_fval, old_old_fval, c1=c1, c2=c2) except _LineSearchError: # Line search failed to find a better solution. msg = "Warning: " + _status_message['pr_loss'] return terminate(2, msg) update = alphak * pk xk += update # upcast if necessary if retall: allvecs.append(xk) k += 1 intermediate_result = OptimizeResult(x=xk, fun=old_fval) if _call_callback_maybe_halt(callback, intermediate_result): return terminate(5, "") update_l1norm = np.linalg.norm(update, ord=1) else: if np.isnan(old_fval) or np.isnan(update_l1norm): return terminate(3, _status_message['nan']) msg = _status_message['success'] return terminate(0, msg) def fminbound(func, x1, x2, args=(), xtol=1e-5, maxfun=500, full_output=0, disp=1): """Bounded minimization for scalar functions. Parameters ---------- func : callable f(x,*args) Objective function to be minimized (must accept and return scalars). x1, x2 : float or array scalar Finite optimization bounds. args : tuple, optional Extra arguments passed to function. xtol : float, optional The convergence tolerance. maxfun : int, optional Maximum number of function evaluations allowed. full_output : bool, optional If True, return optional outputs. disp : int, optional If non-zero, print messages. 0 : no message printing. 1 : non-convergence notification messages only. 2 : print a message on convergence too. 3 : print iteration results. Returns ------- xopt : ndarray Parameters (over given interval) which minimize the objective function. fval : number (Optional output) The function value evaluated at the minimizer. ierr : int (Optional output) An error flag (0 if converged, 1 if maximum number of function calls reached). numfunc : int (Optional output) The number of function calls made. See also -------- minimize_scalar: Interface to minimization algorithms for scalar univariate functions. See the 'Bounded' `method` in particular. Notes ----- Finds a local minimizer of the scalar function `func` in the interval x1 < xopt < x2 using Brent's method. (See `brent` for auto-bracketing.) References ---------- .. [1] Forsythe, G.E., M. A. Malcolm, and C. B. Moler. "Computer Methods for Mathematical Computations." Prentice-Hall Series in Automatic Computation 259 (1977). .. [2] Brent, Richard P. Algorithms for Minimization Without Derivatives. Courier Corporation, 2013. Examples -------- `fminbound` finds the minimizer of the function in the given range. The following examples illustrate this. >>> from scipy import optimize >>> def f(x): ... return (x-1)**2 >>> minimizer = optimize.fminbound(f, -4, 4) >>> minimizer 1.0 >>> minimum = f(minimizer) >>> minimum 0.0 >>> res = optimize.fminbound(f, 3, 4, full_output=True) >>> minimizer, fval, ierr, numfunc = res >>> minimizer 3.000005960860986 >>> minimum = f(minimizer) >>> minimum, fval (4.000023843479476, 4.000023843479476) """ options = {'xatol': xtol, 'maxiter': maxfun, 'disp': disp} res = _minimize_scalar_bounded(func, (x1, x2), args, **options) if full_output: return res['x'], res['fun'], res['status'], res['nfev'] else: return res['x'] def _minimize_scalar_bounded(func, bounds, args=(), xatol=1e-5, maxiter=500, disp=0, **unknown_options): """ Options ------- maxiter : int Maximum number of iterations to perform. disp: int, optional If non-zero, print messages. 0 : no message printing. 1 : non-convergence notification messages only. 2 : print a message on convergence too. 3 : print iteration results. xatol : float Absolute error in solution `xopt` acceptable for convergence. """ _check_unknown_options(unknown_options) maxfun = maxiter # Test bounds are of correct form if len(bounds) != 2: raise ValueError('bounds must have two elements.') x1, x2 = bounds if not (is_finite_scalar(x1) and is_finite_scalar(x2)): raise ValueError("Optimization bounds must be finite scalars.") if x1 > x2: raise ValueError("The lower bound exceeds the upper bound.") flag = 0 header = ' Func-count x f(x) Procedure' step = ' initial' sqrt_eps = sqrt(2.2e-16) golden_mean = 0.5 * (3.0 - sqrt(5.0)) a, b = x1, x2 fulc = a + golden_mean * (b - a) nfc, xf = fulc, fulc rat = e = 0.0 x = xf fx = func(x, *args) num = 1 fmin_data = (1, xf, fx) fu = np.inf ffulc = fnfc = fx xm = 0.5 * (a + b) tol1 = sqrt_eps * np.abs(xf) + xatol / 3.0 tol2 = 2.0 * tol1 if disp > 2: print(" ") print(header) print("%5.0f %12.6g %12.6g %s" % (fmin_data + (step,))) while (np.abs(xf - xm) > (tol2 - 0.5 * (b - a))): golden = 1 # Check for parabolic fit if np.abs(e) > tol1: golden = 0 r = (xf - nfc) * (fx - ffulc) q = (xf - fulc) * (fx - fnfc) p = (xf - fulc) * q - (xf - nfc) * r q = 2.0 * (q - r) if q > 0.0: p = -p q = np.abs(q) r = e e = rat # Check for acceptability of parabola if ((np.abs(p) < np.abs(0.5*q*r)) and (p > q*(a - xf)) and (p < q * (b - xf))): rat = (p + 0.0) / q x = xf + rat step = ' parabolic' if ((x - a) < tol2) or ((b - x) < tol2): si = np.sign(xm - xf) + ((xm - xf) == 0) rat = tol1 * si else: # do a golden-section step golden = 1 if golden: # do a golden-section step if xf >= xm: e = a - xf else: e = b - xf rat = golden_mean*e step = ' golden' si = np.sign(rat) + (rat == 0) x = xf + si * np.maximum(np.abs(rat), tol1) fu = func(x, *args) num += 1 fmin_data = (num, x, fu) if disp > 2: print("%5.0f %12.6g %12.6g %s" % (fmin_data + (step,))) if fu <= fx: if x >= xf: a = xf else: b = xf fulc, ffulc = nfc, fnfc nfc, fnfc = xf, fx xf, fx = x, fu else: if x < xf: a = x else: b = x if (fu <= fnfc) or (nfc == xf): fulc, ffulc = nfc, fnfc nfc, fnfc = x, fu elif (fu <= ffulc) or (fulc == xf) or (fulc == nfc): fulc, ffulc = x, fu xm = 0.5 * (a + b) tol1 = sqrt_eps * np.abs(xf) + xatol / 3.0 tol2 = 2.0 * tol1 if num >= maxfun: flag = 1 break if np.isnan(xf) or np.isnan(fx) or np.isnan(fu): flag = 2 fval = fx if disp > 0: _endprint(x, flag, fval, maxfun, xatol, disp) result = OptimizeResult(fun=fval, status=flag, success=(flag == 0), message={0: 'Solution found.', 1: 'Maximum number of function calls ' 'reached.', 2: _status_message['nan']}.get(flag, ''), x=xf, nfev=num, nit=num) return result class Brent: #need to rethink design of __init__ def __init__(self, func, args=(), tol=1.48e-8, maxiter=500, full_output=0, disp=0): self.func = func self.args = args self.tol = tol self.maxiter = maxiter self._mintol = 1.0e-11 self._cg = 0.3819660 self.xmin = None self.fval = None self.iter = 0 self.funcalls = 0 self.disp = disp # need to rethink design of set_bracket (new options, etc.) def set_bracket(self, brack=None): self.brack = brack def get_bracket_info(self): #set up func = self.func args = self.args brack = self.brack ### BEGIN core bracket_info code ### ### carefully DOCUMENT any CHANGES in core ## if brack is None: xa, xb, xc, fa, fb, fc, funcalls = bracket(func, args=args) elif len(brack) == 2: xa, xb, xc, fa, fb, fc, funcalls = bracket(func, xa=brack[0], xb=brack[1], args=args) elif len(brack) == 3: xa, xb, xc = brack if (xa > xc): # swap so xa < xc can be assumed xc, xa = xa, xc if not ((xa < xb) and (xb < xc)): raise ValueError( "Bracketing values (xa, xb, xc) do not" " fulfill this requirement: (xa < xb) and (xb < xc)" ) fa = func(*((xa,) + args)) fb = func(*((xb,) + args)) fc = func(*((xc,) + args)) if not ((fb < fa) and (fb < fc)): raise ValueError( "Bracketing values (xa, xb, xc) do not fulfill" " this requirement: (f(xb) < f(xa)) and (f(xb) < f(xc))" ) funcalls = 3 else: raise ValueError("Bracketing interval must be " "length 2 or 3 sequence.") ### END core bracket_info code ### return xa, xb, xc, fa, fb, fc, funcalls def optimize(self): # set up for optimization func = self.func xa, xb, xc, fa, fb, fc, funcalls = self.get_bracket_info() _mintol = self._mintol _cg = self._cg ################################# #BEGIN CORE ALGORITHM ################################# x = w = v = xb fw = fv = fx = fb if (xa < xc): a = xa b = xc else: a = xc b = xa deltax = 0.0 iter = 0 if self.disp > 2: print(" ") print(f"{'Func-count':^12} {'x':^12} {'f(x)': ^12}") print(f"{funcalls:^12g} {x:^12.6g} {fx:^12.6g}") while (iter < self.maxiter): tol1 = self.tol * np.abs(x) + _mintol tol2 = 2.0 * tol1 xmid = 0.5 * (a + b) # check for convergence if np.abs(x - xmid) < (tol2 - 0.5 * (b - a)): break # XXX In the first iteration, rat is only bound in the true case # of this conditional. This used to cause an UnboundLocalError # (gh-4140). It should be set before the if (but to what?). if (np.abs(deltax) <= tol1): if (x >= xmid): deltax = a - x # do a golden section step else: deltax = b - x rat = _cg * deltax else: # do a parabolic step tmp1 = (x - w) * (fx - fv) tmp2 = (x - v) * (fx - fw) p = (x - v) * tmp2 - (x - w) * tmp1 tmp2 = 2.0 * (tmp2 - tmp1) if (tmp2 > 0.0): p = -p tmp2 = np.abs(tmp2) dx_temp = deltax deltax = rat # check parabolic fit if ((p > tmp2 * (a - x)) and (p < tmp2 * (b - x)) and (np.abs(p) < np.abs(0.5 * tmp2 * dx_temp))): rat = p * 1.0 / tmp2 # if parabolic step is useful. u = x + rat if ((u - a) < tol2 or (b - u) < tol2): if xmid - x >= 0: rat = tol1 else: rat = -tol1 else: if (x >= xmid): deltax = a - x # if it's not do a golden section step else: deltax = b - x rat = _cg * deltax if (np.abs(rat) < tol1): # update by at least tol1 if rat >= 0: u = x + tol1 else: u = x - tol1 else: u = x + rat fu = func(*((u,) + self.args)) # calculate new output value funcalls += 1 if (fu > fx): # if it's bigger than current if (u < x): a = u else: b = u if (fu <= fw) or (w == x): v = w w = u fv = fw fw = fu elif (fu <= fv) or (v == x) or (v == w): v = u fv = fu else: if (u >= x): a = x else: b = x v = w w = x x = u fv = fw fw = fx fx = fu if self.disp > 2: print(f"{funcalls:^12g} {x:^12.6g} {fx:^12.6g}") iter += 1 ################################# #END CORE ALGORITHM ################################# self.xmin = x self.fval = fx self.iter = iter self.funcalls = funcalls def get_result(self, full_output=False): if full_output: return self.xmin, self.fval, self.iter, self.funcalls else: return self.xmin def brent(func, args=(), brack=None, tol=1.48e-8, full_output=0, maxiter=500): """ Given a function of one variable and a possible bracket, return a local minimizer of the function isolated to a fractional precision of tol. Parameters ---------- func : callable f(x,*args) Objective function. args : tuple, optional Additional arguments (if present). brack : tuple, optional Either a triple ``(xa, xb, xc)`` satisfying ``xa < xb < xc`` and ``func(xb) < func(xa) and func(xb) < func(xc)``, or a pair ``(xa, xb)`` to be used as initial points for a downhill bracket search (see `scipy.optimize.bracket`). The minimizer ``x`` will not necessarily satisfy ``xa <= x <= xb``. tol : float, optional Relative error in solution `xopt` acceptable for convergence. full_output : bool, optional If True, return all output args (xmin, fval, iter, funcalls). maxiter : int, optional Maximum number of iterations in solution. Returns ------- xmin : ndarray Optimum point. fval : float (Optional output) Optimum function value. iter : int (Optional output) Number of iterations. funcalls : int (Optional output) Number of objective function evaluations made. See also -------- minimize_scalar: Interface to minimization algorithms for scalar univariate functions. See the 'Brent' `method` in particular. Notes ----- Uses inverse parabolic interpolation when possible to speed up convergence of golden section method. Does not ensure that the minimum lies in the range specified by `brack`. See `scipy.optimize.fminbound`. Examples -------- We illustrate the behaviour of the function when `brack` is of size 2 and 3 respectively. In the case where `brack` is of the form ``(xa, xb)``, we can see for the given values, the output does not necessarily lie in the range ``(xa, xb)``. >>> def f(x): ... return (x-1)**2 >>> from scipy import optimize >>> minimizer = optimize.brent(f, brack=(1, 2)) >>> minimizer 1 >>> res = optimize.brent(f, brack=(-1, 0.5, 2), full_output=True) >>> xmin, fval, iter, funcalls = res >>> f(xmin), fval (0.0, 0.0) """ options = {'xtol': tol, 'maxiter': maxiter} res = _minimize_scalar_brent(func, brack, args, **options) if full_output: return res['x'], res['fun'], res['nit'], res['nfev'] else: return res['x'] def _minimize_scalar_brent(func, brack=None, args=(), xtol=1.48e-8, maxiter=500, disp=0, **unknown_options): """ Options ------- maxiter : int Maximum number of iterations to perform. xtol : float Relative error in solution `xopt` acceptable for convergence. disp: int, optional If non-zero, print messages. 0 : no message printing. 1 : non-convergence notification messages only. 2 : print a message on convergence too. 3 : print iteration results. Notes ----- Uses inverse parabolic interpolation when possible to speed up convergence of golden section method. """ _check_unknown_options(unknown_options) tol = xtol if tol < 0: raise ValueError('tolerance should be >= 0, got %r' % tol) brent = Brent(func=func, args=args, tol=tol, full_output=True, maxiter=maxiter, disp=disp) brent.set_bracket(brack) brent.optimize() x, fval, nit, nfev = brent.get_result(full_output=True) success = nit < maxiter and not (np.isnan(x) or np.isnan(fval)) if success: message = ("\nOptimization terminated successfully;\n" "The returned value satisfies the termination criteria\n" f"(using xtol = {xtol} )") else: if nit >= maxiter: message = "\nMaximum number of iterations exceeded" if np.isnan(x) or np.isnan(fval): message = f"{_status_message['nan']}" if disp: _print_success_message_or_warn(not success, message) return OptimizeResult(fun=fval, x=x, nit=nit, nfev=nfev, success=success, message=message) def golden(func, args=(), brack=None, tol=_epsilon, full_output=0, maxiter=5000): """ Return the minimizer of a function of one variable using the golden section method. Given a function of one variable and a possible bracketing interval, return a minimizer of the function isolated to a fractional precision of tol. Parameters ---------- func : callable func(x,*args) Objective function to minimize. args : tuple, optional Additional arguments (if present), passed to func. brack : tuple, optional Either a triple ``(xa, xb, xc)`` where ``xa < xb < xc`` and ``func(xb) < func(xa) and func(xb) < func(xc)``, or a pair (xa, xb) to be used as initial points for a downhill bracket search (see `scipy.optimize.bracket`). The minimizer ``x`` will not necessarily satisfy ``xa <= x <= xb``. tol : float, optional x tolerance stop criterion full_output : bool, optional If True, return optional outputs. maxiter : int Maximum number of iterations to perform. Returns ------- xmin : ndarray Optimum point. fval : float (Optional output) Optimum function value. funcalls : int (Optional output) Number of objective function evaluations made. See also -------- minimize_scalar: Interface to minimization algorithms for scalar univariate functions. See the 'Golden' `method` in particular. Notes ----- Uses analog of bisection method to decrease the bracketed interval. Examples -------- We illustrate the behaviour of the function when `brack` is of size 2 and 3, respectively. In the case where `brack` is of the form (xa,xb), we can see for the given values, the output need not necessarily lie in the range ``(xa, xb)``. >>> def f(x): ... return (x-1)**2 >>> from scipy import optimize >>> minimizer = optimize.golden(f, brack=(1, 2)) >>> minimizer 1 >>> res = optimize.golden(f, brack=(-1, 0.5, 2), full_output=True) >>> xmin, fval, funcalls = res >>> f(xmin), fval (9.925165290385052e-18, 9.925165290385052e-18) """ options = {'xtol': tol, 'maxiter': maxiter} res = _minimize_scalar_golden(func, brack, args, **options) if full_output: return res['x'], res['fun'], res['nfev'] else: return res['x'] def _minimize_scalar_golden(func, brack=None, args=(), xtol=_epsilon, maxiter=5000, disp=0, **unknown_options): """ Options ------- xtol : float Relative error in solution `xopt` acceptable for convergence. maxiter : int Maximum number of iterations to perform. disp: int, optional If non-zero, print messages. 0 : no message printing. 1 : non-convergence notification messages only. 2 : print a message on convergence too. 3 : print iteration results. """ _check_unknown_options(unknown_options) tol = xtol if brack is None: xa, xb, xc, fa, fb, fc, funcalls = bracket(func, args=args) elif len(brack) == 2: xa, xb, xc, fa, fb, fc, funcalls = bracket(func, xa=brack[0], xb=brack[1], args=args) elif len(brack) == 3: xa, xb, xc = brack if (xa > xc): # swap so xa < xc can be assumed xc, xa = xa, xc if not ((xa < xb) and (xb < xc)): raise ValueError( "Bracketing values (xa, xb, xc) do not" " fulfill this requirement: (xa < xb) and (xb < xc)" ) fa = func(*((xa,) + args)) fb = func(*((xb,) + args)) fc = func(*((xc,) + args)) if not ((fb < fa) and (fb < fc)): raise ValueError( "Bracketing values (xa, xb, xc) do not fulfill" " this requirement: (f(xb) < f(xa)) and (f(xb) < f(xc))" ) funcalls = 3 else: raise ValueError("Bracketing interval must be length 2 or 3 sequence.") _gR = 0.61803399 # golden ratio conjugate: 2.0/(1.0+sqrt(5.0)) _gC = 1.0 - _gR x3 = xc x0 = xa if (np.abs(xc - xb) > np.abs(xb - xa)): x1 = xb x2 = xb + _gC * (xc - xb) else: x2 = xb x1 = xb - _gC * (xb - xa) f1 = func(*((x1,) + args)) f2 = func(*((x2,) + args)) funcalls += 2 nit = 0 if disp > 2: print(" ") print(f"{'Func-count':^12} {'x':^12} {'f(x)': ^12}") for i in range(maxiter): if np.abs(x3 - x0) <= tol * (np.abs(x1) + np.abs(x2)): break if (f2 < f1): x0 = x1 x1 = x2 x2 = _gR * x1 + _gC * x3 f1 = f2 f2 = func(*((x2,) + args)) else: x3 = x2 x2 = x1 x1 = _gR * x2 + _gC * x0 f2 = f1 f1 = func(*((x1,) + args)) funcalls += 1 if disp > 2: if (f1 < f2): xmin, fval = x1, f1 else: xmin, fval = x2, f2 print(f"{funcalls:^12g} {xmin:^12.6g} {fval:^12.6g}") nit += 1 # end of iteration loop if (f1 < f2): xmin = x1 fval = f1 else: xmin = x2 fval = f2 success = nit < maxiter and not (np.isnan(fval) or np.isnan(xmin)) if success: message = ("\nOptimization terminated successfully;\n" "The returned value satisfies the termination criteria\n" f"(using xtol = {xtol} )") else: if nit >= maxiter: message = "\nMaximum number of iterations exceeded" if np.isnan(xmin) or np.isnan(fval): message = f"{_status_message['nan']}" if disp: _print_success_message_or_warn(not success, message) return OptimizeResult(fun=fval, nfev=funcalls, x=xmin, nit=nit, success=success, message=message) def bracket(func, xa=0.0, xb=1.0, args=(), grow_limit=110.0, maxiter=1000): """ Bracket the minimum of a function. Given a function and distinct initial points, search in the downhill direction (as defined by the initial points) and return three points that bracket the minimum of the function. Parameters ---------- func : callable f(x,*args) Objective function to minimize. xa, xb : float, optional Initial points. Defaults `xa` to 0.0, and `xb` to 1.0. A local minimum need not be contained within this interval. args : tuple, optional Additional arguments (if present), passed to `func`. grow_limit : float, optional Maximum grow limit. Defaults to 110.0 maxiter : int, optional Maximum number of iterations to perform. Defaults to 1000. Returns ------- xa, xb, xc : float Final points of the bracket. fa, fb, fc : float Objective function values at the bracket points. funcalls : int Number of function evaluations made. Raises ------ BracketError If no valid bracket is found before the algorithm terminates. See notes for conditions of a valid bracket. Notes ----- The algorithm attempts to find three strictly ordered points (i.e. :math:`x_a < x_b < x_c` or :math:`x_c < x_b < x_a`) satisfying :math:`f(x_b) ≤ f(x_a)` and :math:`f(x_b) ≤ f(x_c)`, where one of the inequalities must be satistfied strictly and all :math:`x_i` must be finite. Examples -------- This function can find a downward convex region of a function: >>> import numpy as np >>> import matplotlib.pyplot as plt >>> from scipy.optimize import bracket >>> def f(x): ... return 10*x**2 + 3*x + 5 >>> x = np.linspace(-2, 2) >>> y = f(x) >>> init_xa, init_xb = 0.1, 1 >>> xa, xb, xc, fa, fb, fc, funcalls = bracket(f, xa=init_xa, xb=init_xb) >>> plt.axvline(x=init_xa, color="k", linestyle="--") >>> plt.axvline(x=init_xb, color="k", linestyle="--") >>> plt.plot(x, y, "-k") >>> plt.plot(xa, fa, "bx") >>> plt.plot(xb, fb, "rx") >>> plt.plot(xc, fc, "bx") >>> plt.show() Note that both initial points were to the right of the minimum, and the third point was found in the "downhill" direction: the direction in which the function appeared to be decreasing (to the left). The final points are strictly ordered, and the function value at the middle point is less than the function values at the endpoints; it follows that a minimum must lie within the bracket. """ _gold = 1.618034 # golden ratio: (1.0+sqrt(5.0))/2.0 _verysmall_num = 1e-21 # convert to numpy floats if not already xa, xb = np.asarray([xa, xb]) fa = func(*(xa,) + args) fb = func(*(xb,) + args) if (fa < fb): # Switch so fa > fb xa, xb = xb, xa fa, fb = fb, fa xc = xb + _gold * (xb - xa) fc = func(*((xc,) + args)) funcalls = 3 iter = 0 while (fc < fb): tmp1 = (xb - xa) * (fb - fc) tmp2 = (xb - xc) * (fb - fa) val = tmp2 - tmp1 if np.abs(val) < _verysmall_num: denom = 2.0 * _verysmall_num else: denom = 2.0 * val w = xb - ((xb - xc) * tmp2 - (xb - xa) * tmp1) / denom wlim = xb + grow_limit * (xc - xb) msg = ("No valid bracket was found before the iteration limit was " "reached. Consider trying different initial points or " "increasing `maxiter`.") if iter > maxiter: raise RuntimeError(msg) iter += 1 if (w - xc) * (xb - w) > 0.0: fw = func(*((w,) + args)) funcalls += 1 if (fw < fc): xa = xb xb = w fa = fb fb = fw break elif (fw > fb): xc = w fc = fw break w = xc + _gold * (xc - xb) fw = func(*((w,) + args)) funcalls += 1 elif (w - wlim)*(wlim - xc) >= 0.0: w = wlim fw = func(*((w,) + args)) funcalls += 1 elif (w - wlim)*(xc - w) > 0.0: fw = func(*((w,) + args)) funcalls += 1 if (fw < fc): xb = xc xc = w w = xc + _gold * (xc - xb) fb = fc fc = fw fw = func(*((w,) + args)) funcalls += 1 else: w = xc + _gold * (xc - xb) fw = func(*((w,) + args)) funcalls += 1 xa = xb xb = xc xc = w fa = fb fb = fc fc = fw # three conditions for a valid bracket cond1 = (fb < fc and fb <= fa) or (fb < fa and fb <= fc) cond2 = (xa < xb < xc or xc < xb < xa) cond3 = np.isfinite(xa) and np.isfinite(xb) and np.isfinite(xc) msg = ("The algorithm terminated without finding a valid bracket. " "Consider trying different initial points.") if not (cond1 and cond2 and cond3): e = BracketError(msg) e.data = (xa, xb, xc, fa, fb, fc, funcalls) raise e return xa, xb, xc, fa, fb, fc, funcalls class BracketError(RuntimeError): pass def _recover_from_bracket_error(solver, fun, bracket, args, **options): # `bracket` was originally written without checking whether the resulting # bracket is valid. `brent` and `golden` built on top of it without # checking the returned bracket for validity, and their output can be # incorrect without warning/error if the original bracket is invalid. # gh-14858 noticed the problem, and the following is the desired # behavior: # - `scipy.optimize.bracket`, `scipy.optimize.brent`, and # `scipy.optimize.golden` should raise an error if the bracket is # invalid, as opposed to silently returning garbage # - `scipy.optimize.minimize_scalar` should return with `success=False` # and other information # The changes that would be required to achieve this the traditional # way (`return`ing all the required information from bracket all the way # up to `minimizer_scalar`) are extensive and invasive. (See a6aa40d.) # We can achieve the same thing by raising the error in `bracket`, but # storing the information needed by `minimize_scalar` in the error object, # and intercepting it here. try: res = solver(fun, bracket, args, **options) except BracketError as e: msg = str(e) xa, xb, xc, fa, fb, fc, funcalls = e.data xs, fs = [xa, xb, xc], [fa, fb, fc] if np.any(np.isnan([xs, fs])): x, fun = np.nan, np.nan else: imin = np.argmin(fs) x, fun = xs[imin], fs[imin] return OptimizeResult(fun=fun, nfev=funcalls, x=x, nit=0, success=False, message=msg) return res def _line_for_search(x0, alpha, lower_bound, upper_bound): """ Given a parameter vector ``x0`` with length ``n`` and a direction vector ``alpha`` with length ``n``, and lower and upper bounds on each of the ``n`` parameters, what are the bounds on a scalar ``l`` such that ``lower_bound <= x0 + alpha * l <= upper_bound``. Parameters ---------- x0 : np.array. The vector representing the current location. Note ``np.shape(x0) == (n,)``. alpha : np.array. The vector representing the direction. Note ``np.shape(alpha) == (n,)``. lower_bound : np.array. The lower bounds for each parameter in ``x0``. If the ``i``th parameter in ``x0`` is unbounded below, then ``lower_bound[i]`` should be ``-np.inf``. Note ``np.shape(lower_bound) == (n,)``. upper_bound : np.array. The upper bounds for each parameter in ``x0``. If the ``i``th parameter in ``x0`` is unbounded above, then ``upper_bound[i]`` should be ``np.inf``. Note ``np.shape(upper_bound) == (n,)``. Returns ------- res : tuple ``(lmin, lmax)`` The bounds for ``l`` such that ``lower_bound[i] <= x0[i] + alpha[i] * l <= upper_bound[i]`` for all ``i``. """ # get nonzero indices of alpha so we don't get any zero division errors. # alpha will not be all zero, since it is called from _linesearch_powell # where we have a check for this. nonzero, = alpha.nonzero() lower_bound, upper_bound = lower_bound[nonzero], upper_bound[nonzero] x0, alpha = x0[nonzero], alpha[nonzero] low = (lower_bound - x0) / alpha high = (upper_bound - x0) / alpha # positive and negative indices pos = alpha > 0 lmin_pos = np.where(pos, low, 0) lmin_neg = np.where(pos, 0, high) lmax_pos = np.where(pos, high, 0) lmax_neg = np.where(pos, 0, low) lmin = np.max(lmin_pos + lmin_neg) lmax = np.min(lmax_pos + lmax_neg) # if x0 is outside the bounds, then it is possible that there is # no way to get back in the bounds for the parameters being updated # with the current direction alpha. # when this happens, lmax < lmin. # If this is the case, then we can just return (0, 0) return (lmin, lmax) if lmax >= lmin else (0, 0) def _linesearch_powell(func, p, xi, tol=1e-3, lower_bound=None, upper_bound=None, fval=None): """Line-search algorithm using fminbound. Find the minimum of the function ``func(x0 + alpha*direc)``. lower_bound : np.array. The lower bounds for each parameter in ``x0``. If the ``i``th parameter in ``x0`` is unbounded below, then ``lower_bound[i]`` should be ``-np.inf``. Note ``np.shape(lower_bound) == (n,)``. upper_bound : np.array. The upper bounds for each parameter in ``x0``. If the ``i``th parameter in ``x0`` is unbounded above, then ``upper_bound[i]`` should be ``np.inf``. Note ``np.shape(upper_bound) == (n,)``. fval : number. ``fval`` is equal to ``func(p)``, the idea is just to avoid recomputing it so we can limit the ``fevals``. """ def myfunc(alpha): return func(p + alpha*xi) # if xi is zero, then don't optimize if not np.any(xi): return ((fval, p, xi) if fval is not None else (func(p), p, xi)) elif lower_bound is None and upper_bound is None: # non-bounded minimization res = _recover_from_bracket_error(_minimize_scalar_brent, myfunc, None, tuple(), xtol=tol) alpha_min, fret = res.x, res.fun xi = alpha_min * xi return squeeze(fret), p + xi, xi else: bound = _line_for_search(p, xi, lower_bound, upper_bound) if np.isneginf(bound[0]) and np.isposinf(bound[1]): # equivalent to unbounded return _linesearch_powell(func, p, xi, fval=fval, tol=tol) elif not np.isneginf(bound[0]) and not np.isposinf(bound[1]): # we can use a bounded scalar minimization res = _minimize_scalar_bounded(myfunc, bound, xatol=tol / 100) xi = res.x * xi return squeeze(res.fun), p + xi, xi else: # only bounded on one side. use the tangent function to convert # the infinity bound to a finite bound. The new bounded region # is a subregion of the region bounded by -np.pi/2 and np.pi/2. bound = np.arctan(bound[0]), np.arctan(bound[1]) res = _minimize_scalar_bounded( lambda x: myfunc(np.tan(x)), bound, xatol=tol / 100) xi = np.tan(res.x) * xi return squeeze(res.fun), p + xi, xi def fmin_powell(func, x0, args=(), xtol=1e-4, ftol=1e-4, maxiter=None, maxfun=None, full_output=0, disp=1, retall=0, callback=None, direc=None): """ Minimize a function using modified Powell's method. This method only uses function values, not derivatives. Parameters ---------- func : callable f(x,*args) Objective function to be minimized. x0 : ndarray Initial guess. args : tuple, optional Extra arguments passed to func. xtol : float, optional Line-search error tolerance. ftol : float, optional Relative error in ``func(xopt)`` acceptable for convergence. maxiter : int, optional Maximum number of iterations to perform. maxfun : int, optional Maximum number of function evaluations to make. full_output : bool, optional If True, ``fopt``, ``xi``, ``direc``, ``iter``, ``funcalls``, and ``warnflag`` are returned. disp : bool, optional If True, print convergence messages. retall : bool, optional If True, return a list of the solution at each iteration. callback : callable, optional An optional user-supplied function, called after each iteration. Called as ``callback(xk)``, where ``xk`` is the current parameter vector. direc : ndarray, optional Initial fitting step and parameter order set as an (N, N) array, where N is the number of fitting parameters in `x0`. Defaults to step size 1.0 fitting all parameters simultaneously (``np.eye((N, N))``). To prevent initial consideration of values in a step or to change initial step size, set to 0 or desired step size in the Jth position in the Mth block, where J is the position in `x0` and M is the desired evaluation step, with steps being evaluated in index order. Step size and ordering will change freely as minimization proceeds. Returns ------- xopt : ndarray Parameter which minimizes `func`. fopt : number Value of function at minimum: ``fopt = func(xopt)``. direc : ndarray Current direction set. iter : int Number of iterations. funcalls : int Number of function calls made. warnflag : int Integer warning flag: 1 : Maximum number of function evaluations. 2 : Maximum number of iterations. 3 : NaN result encountered. 4 : The result is out of the provided bounds. allvecs : list List of solutions at each iteration. See also -------- minimize: Interface to unconstrained minimization algorithms for multivariate functions. See the 'Powell' method in particular. Notes ----- Uses a modification of Powell's method to find the minimum of a function of N variables. Powell's method is a conjugate direction method. The algorithm has two loops. The outer loop merely iterates over the inner loop. The inner loop minimizes over each current direction in the direction set. At the end of the inner loop, if certain conditions are met, the direction that gave the largest decrease is dropped and replaced with the difference between the current estimated x and the estimated x from the beginning of the inner-loop. The technical conditions for replacing the direction of greatest increase amount to checking that 1. No further gain can be made along the direction of greatest increase from that iteration. 2. The direction of greatest increase accounted for a large sufficient fraction of the decrease in the function value from that iteration of the inner loop. References ---------- Powell M.J.D. (1964) An efficient method for finding the minimum of a function of several variables without calculating derivatives, Computer Journal, 7 (2):155-162. Press W., Teukolsky S.A., Vetterling W.T., and Flannery B.P.: Numerical Recipes (any edition), Cambridge University Press Examples -------- >>> def f(x): ... return x**2 >>> from scipy import optimize >>> minimum = optimize.fmin_powell(f, -1) Optimization terminated successfully. Current function value: 0.000000 Iterations: 2 Function evaluations: 16 >>> minimum array(0.0) """ opts = {'xtol': xtol, 'ftol': ftol, 'maxiter': maxiter, 'maxfev': maxfun, 'disp': disp, 'direc': direc, 'return_all': retall} callback = _wrap_callback(callback) res = _minimize_powell(func, x0, args, callback=callback, **opts) if full_output: retlist = (res['x'], res['fun'], res['direc'], res['nit'], res['nfev'], res['status']) if retall: retlist += (res['allvecs'], ) return retlist else: if retall: return res['x'], res['allvecs'] else: return res['x'] def _minimize_powell(func, x0, args=(), callback=None, bounds=None, xtol=1e-4, ftol=1e-4, maxiter=None, maxfev=None, disp=False, direc=None, return_all=False, **unknown_options): """ Minimization of scalar function of one or more variables using the modified Powell algorithm. Parameters ---------- fun : callable The objective function to be minimized. ``fun(x, *args) -> float`` where ``x`` is a 1-D array with shape (n,) and ``args`` is a tuple of the fixed parameters needed to completely specify the function. x0 : ndarray, shape (n,) Initial guess. Array of real elements of size (n,), where ``n`` is the number of independent variables. args : tuple, optional Extra arguments passed to the objective function and its derivatives (`fun`, `jac` and `hess` functions). method : str or callable, optional The present documentation is specific to ``method='powell'``, but other options are available. See documentation for `scipy.optimize.minimize`. bounds : sequence or `Bounds`, optional Bounds on decision variables. There are two ways to specify the bounds: 1. Instance of `Bounds` class. 2. Sequence of ``(min, max)`` pairs for each element in `x`. None is used to specify no bound. If bounds are not provided, then an unbounded line search will be used. If bounds are provided and the initial guess is within the bounds, then every function evaluation throughout the minimization procedure will be within the bounds. If bounds are provided, the initial guess is outside the bounds, and `direc` is full rank (or left to default), then some function evaluations during the first iteration may be outside the bounds, but every function evaluation after the first iteration will be within the bounds. If `direc` is not full rank, then some parameters may not be optimized and the solution is not guaranteed to be within the bounds. options : dict, optional A dictionary of solver options. All methods accept the following generic options: maxiter : int Maximum number of iterations to perform. Depending on the method each iteration may use several function evaluations. disp : bool Set to True to print convergence messages. See method-specific options for ``method='powell'`` below. callback : callable, optional Called after each iteration. The signature is: ``callback(xk)`` where ``xk`` is the current parameter vector. Returns ------- res : OptimizeResult The optimization result represented as a ``OptimizeResult`` object. Important attributes are: ``x`` the solution array, ``success`` a Boolean flag indicating if the optimizer exited successfully and ``message`` which describes the cause of the termination. See `OptimizeResult` for a description of other attributes. Options ------- disp : bool Set to True to print convergence messages. xtol : float Relative error in solution `xopt` acceptable for convergence. ftol : float Relative error in ``fun(xopt)`` acceptable for convergence. maxiter, maxfev : int Maximum allowed number of iterations and function evaluations. Will default to ``N*1000``, where ``N`` is the number of variables, if neither `maxiter` or `maxfev` is set. If both `maxiter` and `maxfev` are set, minimization will stop at the first reached. direc : ndarray Initial set of direction vectors for the Powell method. return_all : bool, optional Set to True to return a list of the best solution at each of the iterations. """ _check_unknown_options(unknown_options) maxfun = maxfev retall = return_all x = asarray(x0).flatten() if retall: allvecs = [x] N = len(x) # If neither are set, then set both to default if maxiter is None and maxfun is None: maxiter = N * 1000 maxfun = N * 1000 elif maxiter is None: # Convert remaining Nones, to np.inf, unless the other is np.inf, in # which case use the default to avoid unbounded iteration if maxfun == np.inf: maxiter = N * 1000 else: maxiter = np.inf elif maxfun is None: if maxiter == np.inf: maxfun = N * 1000 else: maxfun = np.inf # we need to use a mutable object here that we can update in the # wrapper function fcalls, func = _wrap_scalar_function_maxfun_validation(func, args, maxfun) if direc is None: direc = eye(N, dtype=float) else: direc = asarray(direc, dtype=float) if np.linalg.matrix_rank(direc) != direc.shape[0]: warnings.warn("direc input is not full rank, some parameters may " "not be optimized", OptimizeWarning, stacklevel=3) if bounds is None: # don't make these arrays of all +/- inf. because # _linesearch_powell will do an unnecessary check of all the elements. # just keep them None, _linesearch_powell will not have to check # all the elements. lower_bound, upper_bound = None, None else: # bounds is standardized in _minimize.py. lower_bound, upper_bound = bounds.lb, bounds.ub if np.any(lower_bound > x0) or np.any(x0 > upper_bound): warnings.warn("Initial guess is not within the specified bounds", OptimizeWarning, stacklevel=3) fval = squeeze(func(x)) x1 = x.copy() iter = 0 while True: try: fx = fval bigind = 0 delta = 0.0 for i in range(N): direc1 = direc[i] fx2 = fval fval, x, direc1 = _linesearch_powell(func, x, direc1, tol=xtol * 100, lower_bound=lower_bound, upper_bound=upper_bound, fval=fval) if (fx2 - fval) > delta: delta = fx2 - fval bigind = i iter += 1 if retall: allvecs.append(x) intermediate_result = OptimizeResult(x=x, fun=fval) if _call_callback_maybe_halt(callback, intermediate_result): break bnd = ftol * (np.abs(fx) + np.abs(fval)) + 1e-20 if 2.0 * (fx - fval) <= bnd: break if fcalls[0] >= maxfun: break if iter >= maxiter: break if np.isnan(fx) and np.isnan(fval): # Ended up in a nan-region: bail out break # Construct the extrapolated point direc1 = x - x1 x1 = x.copy() # make sure that we don't go outside the bounds when extrapolating if lower_bound is None and upper_bound is None: lmax = 1 else: _, lmax = _line_for_search(x, direc1, lower_bound, upper_bound) x2 = x + min(lmax, 1) * direc1 fx2 = squeeze(func(x2)) if (fx > fx2): t = 2.0*(fx + fx2 - 2.0*fval) temp = (fx - fval - delta) t *= temp*temp temp = fx - fx2 t -= delta*temp*temp if t < 0.0: fval, x, direc1 = _linesearch_powell( func, x, direc1, tol=xtol * 100, lower_bound=lower_bound, upper_bound=upper_bound, fval=fval ) if np.any(direc1): direc[bigind] = direc[-1] direc[-1] = direc1 except _MaxFuncCallError: break warnflag = 0 msg = _status_message['success'] # out of bounds is more urgent than exceeding function evals or iters, # but I don't want to cause inconsistencies by changing the # established warning flags for maxfev and maxiter, so the out of bounds # warning flag becomes 3, but is checked for first. if bounds and (np.any(lower_bound > x) or np.any(x > upper_bound)): warnflag = 4 msg = _status_message['out_of_bounds'] elif fcalls[0] >= maxfun: warnflag = 1 msg = _status_message['maxfev'] elif iter >= maxiter: warnflag = 2 msg = _status_message['maxiter'] elif np.isnan(fval) or np.isnan(x).any(): warnflag = 3 msg = _status_message['nan'] if disp: _print_success_message_or_warn(warnflag, msg, RuntimeWarning) print(" Current function value: %f" % fval) print(" Iterations: %d" % iter) print(" Function evaluations: %d" % fcalls[0]) result = OptimizeResult(fun=fval, direc=direc, nit=iter, nfev=fcalls[0], status=warnflag, success=(warnflag == 0), message=msg, x=x) if retall: result['allvecs'] = allvecs return result def _endprint(x, flag, fval, maxfun, xtol, disp): if flag == 0: if disp > 1: print("\nOptimization terminated successfully;\n" "The returned value satisfies the termination criteria\n" "(using xtol = ", xtol, ")") return if flag == 1: msg = ("\nMaximum number of function evaluations exceeded --- " "increase maxfun argument.\n") elif flag == 2: msg = "\n{}".format(_status_message['nan']) _print_success_message_or_warn(flag, msg) return def brute(func, ranges, args=(), Ns=20, full_output=0, finish=fmin, disp=False, workers=1): """Minimize a function over a given range by brute force. Uses the "brute force" method, i.e., computes the function's value at each point of a multidimensional grid of points, to find the global minimum of the function. The function is evaluated everywhere in the range with the datatype of the first call to the function, as enforced by the ``vectorize`` NumPy function. The value and type of the function evaluation returned when ``full_output=True`` are affected in addition by the ``finish`` argument (see Notes). The brute force approach is inefficient because the number of grid points increases exponentially - the number of grid points to evaluate is ``Ns ** len(x)``. Consequently, even with coarse grid spacing, even moderately sized problems can take a long time to run, and/or run into memory limitations. Parameters ---------- func : callable The objective function to be minimized. Must be in the form ``f(x, *args)``, where ``x`` is the argument in the form of a 1-D array and ``args`` is a tuple of any additional fixed parameters needed to completely specify the function. ranges : tuple Each component of the `ranges` tuple must be either a "slice object" or a range tuple of the form ``(low, high)``. The program uses these to create the grid of points on which the objective function will be computed. See `Note 2` for more detail. args : tuple, optional Any additional fixed parameters needed to completely specify the function. Ns : int, optional Number of grid points along the axes, if not otherwise specified. See `Note2`. full_output : bool, optional If True, return the evaluation grid and the objective function's values on it. finish : callable, optional An optimization function that is called with the result of brute force minimization as initial guess. `finish` should take `func` and the initial guess as positional arguments, and take `args` as keyword arguments. It may additionally take `full_output` and/or `disp` as keyword arguments. Use None if no "polishing" function is to be used. See Notes for more details. disp : bool, optional Set to True to print convergence messages from the `finish` callable. workers : int or map-like callable, optional If `workers` is an int the grid is subdivided into `workers` sections and evaluated in parallel (uses `multiprocessing.Pool `). Supply `-1` to use all cores available to the Process. Alternatively supply a map-like callable, such as `multiprocessing.Pool.map` for evaluating the grid in parallel. This evaluation is carried out as ``workers(func, iterable)``. Requires that `func` be pickleable. .. versionadded:: 1.3.0 Returns ------- x0 : ndarray A 1-D array containing the coordinates of a point at which the objective function had its minimum value. (See `Note 1` for which point is returned.) fval : float Function value at the point `x0`. (Returned when `full_output` is True.) grid : tuple Representation of the evaluation grid. It has the same length as `x0`. (Returned when `full_output` is True.) Jout : ndarray Function values at each point of the evaluation grid, i.e., ``Jout = func(*grid)``. (Returned when `full_output` is True.) See Also -------- basinhopping, differential_evolution Notes ----- *Note 1*: The program finds the gridpoint at which the lowest value of the objective function occurs. If `finish` is None, that is the point returned. When the global minimum occurs within (or not very far outside) the grid's boundaries, and the grid is fine enough, that point will be in the neighborhood of the global minimum. However, users often employ some other optimization program to "polish" the gridpoint values, i.e., to seek a more precise (local) minimum near `brute's` best gridpoint. The `brute` function's `finish` option provides a convenient way to do that. Any polishing program used must take `brute's` output as its initial guess as a positional argument, and take `brute's` input values for `args` as keyword arguments, otherwise an error will be raised. It may additionally take `full_output` and/or `disp` as keyword arguments. `brute` assumes that the `finish` function returns either an `OptimizeResult` object or a tuple in the form: ``(xmin, Jmin, ... , statuscode)``, where ``xmin`` is the minimizing value of the argument, ``Jmin`` is the minimum value of the objective function, "..." may be some other returned values (which are not used by `brute`), and ``statuscode`` is the status code of the `finish` program. Note that when `finish` is not None, the values returned are those of the `finish` program, *not* the gridpoint ones. Consequently, while `brute` confines its search to the input grid points, the `finish` program's results usually will not coincide with any gridpoint, and may fall outside the grid's boundary. Thus, if a minimum only needs to be found over the provided grid points, make sure to pass in `finish=None`. *Note 2*: The grid of points is a `numpy.mgrid` object. For `brute` the `ranges` and `Ns` inputs have the following effect. Each component of the `ranges` tuple can be either a slice object or a two-tuple giving a range of values, such as (0, 5). If the component is a slice object, `brute` uses it directly. If the component is a two-tuple range, `brute` internally converts it to a slice object that interpolates `Ns` points from its low-value to its high-value, inclusive. Examples -------- We illustrate the use of `brute` to seek the global minimum of a function of two variables that is given as the sum of a positive-definite quadratic and two deep "Gaussian-shaped" craters. Specifically, define the objective function `f` as the sum of three other functions, ``f = f1 + f2 + f3``. We suppose each of these has a signature ``(z, *params)``, where ``z = (x, y)``, and ``params`` and the functions are as defined below. >>> import numpy as np >>> params = (2, 3, 7, 8, 9, 10, 44, -1, 2, 26, 1, -2, 0.5) >>> def f1(z, *params): ... x, y = z ... a, b, c, d, e, f, g, h, i, j, k, l, scale = params ... return (a * x**2 + b * x * y + c * y**2 + d*x + e*y + f) >>> def f2(z, *params): ... x, y = z ... a, b, c, d, e, f, g, h, i, j, k, l, scale = params ... return (-g*np.exp(-((x-h)**2 + (y-i)**2) / scale)) >>> def f3(z, *params): ... x, y = z ... a, b, c, d, e, f, g, h, i, j, k, l, scale = params ... return (-j*np.exp(-((x-k)**2 + (y-l)**2) / scale)) >>> def f(z, *params): ... return f1(z, *params) + f2(z, *params) + f3(z, *params) Thus, the objective function may have local minima near the minimum of each of the three functions of which it is composed. To use `fmin` to polish its gridpoint result, we may then continue as follows: >>> rranges = (slice(-4, 4, 0.25), slice(-4, 4, 0.25)) >>> from scipy import optimize >>> resbrute = optimize.brute(f, rranges, args=params, full_output=True, ... finish=optimize.fmin) >>> resbrute[0] # global minimum array([-1.05665192, 1.80834843]) >>> resbrute[1] # function value at global minimum -3.4085818767 Note that if `finish` had been set to None, we would have gotten the gridpoint [-1.0 1.75] where the rounded function value is -2.892. """ N = len(ranges) if N > 40: raise ValueError("Brute Force not possible with more " "than 40 variables.") lrange = list(ranges) for k in range(N): if not isinstance(lrange[k], slice): if len(lrange[k]) < 3: lrange[k] = tuple(lrange[k]) + (complex(Ns),) lrange[k] = slice(*lrange[k]) if (N == 1): lrange = lrange[0] grid = np.mgrid[lrange] # obtain an array of parameters that is iterable by a map-like callable inpt_shape = grid.shape if (N > 1): grid = np.reshape(grid, (inpt_shape[0], np.prod(inpt_shape[1:]))).T if not np.iterable(args): args = (args,) wrapped_func = _Brute_Wrapper(func, args) # iterate over input arrays, possibly in parallel with MapWrapper(pool=workers) as mapper: Jout = np.array(list(mapper(wrapped_func, grid))) if (N == 1): grid = (grid,) Jout = np.squeeze(Jout) elif (N > 1): Jout = np.reshape(Jout, inpt_shape[1:]) grid = np.reshape(grid.T, inpt_shape) Nshape = shape(Jout) indx = argmin(Jout.ravel(), axis=-1) Nindx = np.empty(N, int) xmin = np.empty(N, float) for k in range(N - 1, -1, -1): thisN = Nshape[k] Nindx[k] = indx % Nshape[k] indx = indx // thisN for k in range(N): xmin[k] = grid[k][tuple(Nindx)] Jmin = Jout[tuple(Nindx)] if (N == 1): grid = grid[0] xmin = xmin[0] if callable(finish): # set up kwargs for `finish` function finish_args = _getfullargspec(finish).args finish_kwargs = dict() if 'full_output' in finish_args: finish_kwargs['full_output'] = 1 if 'disp' in finish_args: finish_kwargs['disp'] = disp elif 'options' in finish_args: # pass 'disp' as `options` # (e.g., if `finish` is `minimize`) finish_kwargs['options'] = {'disp': disp} # run minimizer res = finish(func, xmin, args=args, **finish_kwargs) if isinstance(res, OptimizeResult): xmin = res.x Jmin = res.fun success = res.success else: xmin = res[0] Jmin = res[1] success = res[-1] == 0 if not success: if disp: warnings.warn("Either final optimization did not succeed or `finish` " "does not return `statuscode` as its last argument.", RuntimeWarning, stacklevel=2) if full_output: return xmin, Jmin, grid, Jout else: return xmin class _Brute_Wrapper: """ Object to wrap user cost function for optimize.brute, allowing picklability """ def __init__(self, f, args): self.f = f self.args = [] if args is None else args def __call__(self, x): # flatten needed for one dimensional case. return self.f(np.asarray(x).flatten(), *self.args) def show_options(solver=None, method=None, disp=True): """ Show documentation for additional options of optimization solvers. These are method-specific options that can be supplied through the ``options`` dict. Parameters ---------- solver : str Type of optimization solver. One of 'minimize', 'minimize_scalar', 'root', 'root_scalar', 'linprog', or 'quadratic_assignment'. method : str, optional If not given, shows all methods of the specified solver. Otherwise, show only the options for the specified method. Valid values corresponds to methods' names of respective solver (e.g., 'BFGS' for 'minimize'). disp : bool, optional Whether to print the result rather than returning it. Returns ------- text Either None (for disp=True) or the text string (disp=False) Notes ----- The solver-specific methods are: `scipy.optimize.minimize` - :ref:`Nelder-Mead ` - :ref:`Powell ` - :ref:`CG ` - :ref:`BFGS ` - :ref:`Newton-CG ` - :ref:`L-BFGS-B ` - :ref:`TNC ` - :ref:`COBYLA ` - :ref:`SLSQP ` - :ref:`dogleg ` - :ref:`trust-ncg ` `scipy.optimize.root` - :ref:`hybr ` - :ref:`lm ` - :ref:`broyden1 ` - :ref:`broyden2 ` - :ref:`anderson ` - :ref:`linearmixing ` - :ref:`diagbroyden ` - :ref:`excitingmixing ` - :ref:`krylov ` - :ref:`df-sane ` `scipy.optimize.minimize_scalar` - :ref:`brent ` - :ref:`golden ` - :ref:`bounded ` `scipy.optimize.root_scalar` - :ref:`bisect ` - :ref:`brentq ` - :ref:`brenth ` - :ref:`ridder ` - :ref:`toms748 ` - :ref:`newton ` - :ref:`secant ` - :ref:`halley ` `scipy.optimize.linprog` - :ref:`simplex ` - :ref:`interior-point ` - :ref:`revised simplex ` - :ref:`highs ` - :ref:`highs-ds ` - :ref:`highs-ipm ` `scipy.optimize.quadratic_assignment` - :ref:`faq ` - :ref:`2opt ` Examples -------- We can print documentations of a solver in stdout: >>> from scipy.optimize import show_options >>> show_options(solver="minimize") ... Specifying a method is possible: >>> show_options(solver="minimize", method="Nelder-Mead") ... We can also get the documentations as a string: >>> show_options(solver="minimize", method="Nelder-Mead", disp=False) Minimization of scalar function of one or more variables using the ... """ import textwrap doc_routines = { 'minimize': ( ('bfgs', 'scipy.optimize._optimize._minimize_bfgs'), ('cg', 'scipy.optimize._optimize._minimize_cg'), ('cobyla', 'scipy.optimize._cobyla_py._minimize_cobyla'), ('dogleg', 'scipy.optimize._trustregion_dogleg._minimize_dogleg'), ('l-bfgs-b', 'scipy.optimize._lbfgsb_py._minimize_lbfgsb'), ('nelder-mead', 'scipy.optimize._optimize._minimize_neldermead'), ('newton-cg', 'scipy.optimize._optimize._minimize_newtoncg'), ('powell', 'scipy.optimize._optimize._minimize_powell'), ('slsqp', 'scipy.optimize._slsqp_py._minimize_slsqp'), ('tnc', 'scipy.optimize._tnc._minimize_tnc'), ('trust-ncg', 'scipy.optimize._trustregion_ncg._minimize_trust_ncg'), ('trust-constr', 'scipy.optimize._trustregion_constr.' '_minimize_trustregion_constr'), ('trust-exact', 'scipy.optimize._trustregion_exact._minimize_trustregion_exact'), ('trust-krylov', 'scipy.optimize._trustregion_krylov._minimize_trust_krylov'), ), 'root': ( ('hybr', 'scipy.optimize._minpack_py._root_hybr'), ('lm', 'scipy.optimize._root._root_leastsq'), ('broyden1', 'scipy.optimize._root._root_broyden1_doc'), ('broyden2', 'scipy.optimize._root._root_broyden2_doc'), ('anderson', 'scipy.optimize._root._root_anderson_doc'), ('diagbroyden', 'scipy.optimize._root._root_diagbroyden_doc'), ('excitingmixing', 'scipy.optimize._root._root_excitingmixing_doc'), ('linearmixing', 'scipy.optimize._root._root_linearmixing_doc'), ('krylov', 'scipy.optimize._root._root_krylov_doc'), ('df-sane', 'scipy.optimize._spectral._root_df_sane'), ), 'root_scalar': ( ('bisect', 'scipy.optimize._root_scalar._root_scalar_bisect_doc'), ('brentq', 'scipy.optimize._root_scalar._root_scalar_brentq_doc'), ('brenth', 'scipy.optimize._root_scalar._root_scalar_brenth_doc'), ('ridder', 'scipy.optimize._root_scalar._root_scalar_ridder_doc'), ('toms748', 'scipy.optimize._root_scalar._root_scalar_toms748_doc'), ('secant', 'scipy.optimize._root_scalar._root_scalar_secant_doc'), ('newton', 'scipy.optimize._root_scalar._root_scalar_newton_doc'), ('halley', 'scipy.optimize._root_scalar._root_scalar_halley_doc'), ), 'linprog': ( ('simplex', 'scipy.optimize._linprog._linprog_simplex_doc'), ('interior-point', 'scipy.optimize._linprog._linprog_ip_doc'), ('revised simplex', 'scipy.optimize._linprog._linprog_rs_doc'), ('highs-ipm', 'scipy.optimize._linprog._linprog_highs_ipm_doc'), ('highs-ds', 'scipy.optimize._linprog._linprog_highs_ds_doc'), ('highs', 'scipy.optimize._linprog._linprog_highs_doc'), ), 'quadratic_assignment': ( ('faq', 'scipy.optimize._qap._quadratic_assignment_faq'), ('2opt', 'scipy.optimize._qap._quadratic_assignment_2opt'), ), 'minimize_scalar': ( ('brent', 'scipy.optimize._optimize._minimize_scalar_brent'), ('bounded', 'scipy.optimize._optimize._minimize_scalar_bounded'), ('golden', 'scipy.optimize._optimize._minimize_scalar_golden'), ), } if solver is None: text = ["\n\n\n========\n", "minimize\n", "========\n"] text.append(show_options('minimize', disp=False)) text.extend(["\n\n===============\n", "minimize_scalar\n", "===============\n"]) text.append(show_options('minimize_scalar', disp=False)) text.extend(["\n\n\n====\n", "root\n", "====\n"]) text.append(show_options('root', disp=False)) text.extend(['\n\n\n=======\n', 'linprog\n', '=======\n']) text.append(show_options('linprog', disp=False)) text = "".join(text) else: solver = solver.lower() if solver not in doc_routines: raise ValueError(f'Unknown solver {solver!r}') if method is None: text = [] for name, _ in doc_routines[solver]: text.extend(["\n\n" + name, "\n" + "="*len(name) + "\n\n"]) text.append(show_options(solver, name, disp=False)) text = "".join(text) else: method = method.lower() methods = dict(doc_routines[solver]) if method not in methods: raise ValueError(f"Unknown method {method!r}") name = methods[method] # Import function object parts = name.split('.') mod_name = ".".join(parts[:-1]) __import__(mod_name) obj = getattr(sys.modules[mod_name], parts[-1]) # Get doc doc = obj.__doc__ if doc is not None: text = textwrap.dedent(doc).strip() else: text = "" if disp: print(text) return else: return text