peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/optimize
/__init__.py
""" | |
===================================================== | |
Optimization and root finding (:mod:`scipy.optimize`) | |
===================================================== | |
.. currentmodule:: scipy.optimize | |
.. toctree:: | |
:hidden: | |
optimize.cython_optimize | |
SciPy ``optimize`` provides functions for minimizing (or maximizing) | |
objective functions, possibly subject to constraints. It includes | |
solvers for nonlinear problems (with support for both local and global | |
optimization algorithms), linear programming, constrained | |
and nonlinear least-squares, root finding, and curve fitting. | |
Common functions and objects, shared across different solvers, are: | |
.. autosummary:: | |
:toctree: generated/ | |
show_options - Show specific options optimization solvers. | |
OptimizeResult - The optimization result returned by some optimizers. | |
OptimizeWarning - The optimization encountered problems. | |
Optimization | |
============ | |
Scalar functions optimization | |
----------------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
minimize_scalar - Interface for minimizers of univariate functions | |
The `minimize_scalar` function supports the following methods: | |
.. toctree:: | |
optimize.minimize_scalar-brent | |
optimize.minimize_scalar-bounded | |
optimize.minimize_scalar-golden | |
Local (multivariate) optimization | |
--------------------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
minimize - Interface for minimizers of multivariate functions. | |
The `minimize` function supports the following methods: | |
.. toctree:: | |
optimize.minimize-neldermead | |
optimize.minimize-powell | |
optimize.minimize-cg | |
optimize.minimize-bfgs | |
optimize.minimize-newtoncg | |
optimize.minimize-lbfgsb | |
optimize.minimize-tnc | |
optimize.minimize-cobyla | |
optimize.minimize-slsqp | |
optimize.minimize-trustconstr | |
optimize.minimize-dogleg | |
optimize.minimize-trustncg | |
optimize.minimize-trustkrylov | |
optimize.minimize-trustexact | |
Constraints are passed to `minimize` function as a single object or | |
as a list of objects from the following classes: | |
.. autosummary:: | |
:toctree: generated/ | |
NonlinearConstraint - Class defining general nonlinear constraints. | |
LinearConstraint - Class defining general linear constraints. | |
Simple bound constraints are handled separately and there is a special class | |
for them: | |
.. autosummary:: | |
:toctree: generated/ | |
Bounds - Bound constraints. | |
Quasi-Newton strategies implementing `HessianUpdateStrategy` | |
interface can be used to approximate the Hessian in `minimize` | |
function (available only for the 'trust-constr' method). Available | |
quasi-Newton methods implementing this interface are: | |
.. autosummary:: | |
:toctree: generated/ | |
BFGS - Broyden-Fletcher-Goldfarb-Shanno (BFGS) Hessian update strategy. | |
SR1 - Symmetric-rank-1 Hessian update strategy. | |
.. _global_optimization: | |
Global optimization | |
------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
basinhopping - Basinhopping stochastic optimizer. | |
brute - Brute force searching optimizer. | |
differential_evolution - Stochastic optimizer using differential evolution. | |
shgo - Simplicial homology global optimizer. | |
dual_annealing - Dual annealing stochastic optimizer. | |
direct - DIRECT (Dividing Rectangles) optimizer. | |
Least-squares and curve fitting | |
=============================== | |
Nonlinear least-squares | |
----------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
least_squares - Solve a nonlinear least-squares problem with bounds on the variables. | |
Linear least-squares | |
-------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
nnls - Linear least-squares problem with non-negativity constraint. | |
lsq_linear - Linear least-squares problem with bound constraints. | |
isotonic_regression - Least squares problem of isotonic regression via PAVA. | |
Curve fitting | |
------------- | |
.. autosummary:: | |
:toctree: generated/ | |
curve_fit -- Fit curve to a set of points. | |
Root finding | |
============ | |
Scalar functions | |
---------------- | |
.. autosummary:: | |
:toctree: generated/ | |
root_scalar - Unified interface for nonlinear solvers of scalar functions. | |
brentq - quadratic interpolation Brent method. | |
brenth - Brent method, modified by Harris with hyperbolic extrapolation. | |
ridder - Ridder's method. | |
bisect - Bisection method. | |
newton - Newton's method (also Secant and Halley's methods). | |
toms748 - Alefeld, Potra & Shi Algorithm 748. | |
RootResults - The root finding result returned by some root finders. | |
The `root_scalar` function supports the following methods: | |
.. toctree:: | |
optimize.root_scalar-brentq | |
optimize.root_scalar-brenth | |
optimize.root_scalar-bisect | |
optimize.root_scalar-ridder | |
optimize.root_scalar-newton | |
optimize.root_scalar-toms748 | |
optimize.root_scalar-secant | |
optimize.root_scalar-halley | |
The table below lists situations and appropriate methods, along with | |
*asymptotic* convergence rates per iteration (and per function evaluation) | |
for successful convergence to a simple root(*). | |
Bisection is the slowest of them all, adding one bit of accuracy for each | |
function evaluation, but is guaranteed to converge. | |
The other bracketing methods all (eventually) increase the number of accurate | |
bits by about 50% for every function evaluation. | |
The derivative-based methods, all built on `newton`, can converge quite quickly | |
if the initial value is close to the root. They can also be applied to | |
functions defined on (a subset of) the complex plane. | |
+-------------+----------+----------+-----------+-------------+-------------+----------------+ | |
| Domain of f | Bracket? | Derivatives? | Solvers | Convergence | | |
+ + +----------+-----------+ +-------------+----------------+ | |
| | | `fprime` | `fprime2` | | Guaranteed? | Rate(s)(*) | | |
+=============+==========+==========+===========+=============+=============+================+ | |
| `R` | Yes | N/A | N/A | - bisection | - Yes | - 1 "Linear" | | |
| | | | | - brentq | - Yes | - >=1, <= 1.62 | | |
| | | | | - brenth | - Yes | - >=1, <= 1.62 | | |
| | | | | - ridder | - Yes | - 2.0 (1.41) | | |
| | | | | - toms748 | - Yes | - 2.7 (1.65) | | |
+-------------+----------+----------+-----------+-------------+-------------+----------------+ | |
| `R` or `C` | No | No | No | secant | No | 1.62 (1.62) | | |
+-------------+----------+----------+-----------+-------------+-------------+----------------+ | |
| `R` or `C` | No | Yes | No | newton | No | 2.00 (1.41) | | |
+-------------+----------+----------+-----------+-------------+-------------+----------------+ | |
| `R` or `C` | No | Yes | Yes | halley | No | 3.00 (1.44) | | |
+-------------+----------+----------+-----------+-------------+-------------+----------------+ | |
.. seealso:: | |
`scipy.optimize.cython_optimize` -- Typed Cython versions of root finding functions | |
Fixed point finding: | |
.. autosummary:: | |
:toctree: generated/ | |
fixed_point - Single-variable fixed-point solver. | |
Multidimensional | |
---------------- | |
.. autosummary:: | |
:toctree: generated/ | |
root - Unified interface for nonlinear solvers of multivariate functions. | |
The `root` function supports the following methods: | |
.. toctree:: | |
optimize.root-hybr | |
optimize.root-lm | |
optimize.root-broyden1 | |
optimize.root-broyden2 | |
optimize.root-anderson | |
optimize.root-linearmixing | |
optimize.root-diagbroyden | |
optimize.root-excitingmixing | |
optimize.root-krylov | |
optimize.root-dfsane | |
Linear programming / MILP | |
========================= | |
.. autosummary:: | |
:toctree: generated/ | |
milp -- Mixed integer linear programming. | |
linprog -- Unified interface for minimizers of linear programming problems. | |
The `linprog` function supports the following methods: | |
.. toctree:: | |
optimize.linprog-simplex | |
optimize.linprog-interior-point | |
optimize.linprog-revised_simplex | |
optimize.linprog-highs-ipm | |
optimize.linprog-highs-ds | |
optimize.linprog-highs | |
The simplex, interior-point, and revised simplex methods support callback | |
functions, such as: | |
.. autosummary:: | |
:toctree: generated/ | |
linprog_verbose_callback -- Sample callback function for linprog (simplex). | |
Assignment problems | |
=================== | |
.. autosummary:: | |
:toctree: generated/ | |
linear_sum_assignment -- Solves the linear-sum assignment problem. | |
quadratic_assignment -- Solves the quadratic assignment problem. | |
The `quadratic_assignment` function supports the following methods: | |
.. toctree:: | |
optimize.qap-faq | |
optimize.qap-2opt | |
Utilities | |
========= | |
Finite-difference approximation | |
------------------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
approx_fprime - Approximate the gradient of a scalar function. | |
check_grad - Check the supplied derivative using finite differences. | |
Line search | |
----------- | |
.. autosummary:: | |
:toctree: generated/ | |
bracket - Bracket a minimum, given two starting points. | |
line_search - Return a step that satisfies the strong Wolfe conditions. | |
Hessian approximation | |
--------------------- | |
.. autosummary:: | |
:toctree: generated/ | |
LbfgsInvHessProduct - Linear operator for L-BFGS approximate inverse Hessian. | |
HessianUpdateStrategy - Interface for implementing Hessian update strategies | |
Benchmark problems | |
------------------ | |
.. autosummary:: | |
:toctree: generated/ | |
rosen - The Rosenbrock function. | |
rosen_der - The derivative of the Rosenbrock function. | |
rosen_hess - The Hessian matrix of the Rosenbrock function. | |
rosen_hess_prod - Product of the Rosenbrock Hessian with a vector. | |
Legacy functions | |
================ | |
The functions below are not recommended for use in new scripts; | |
all of these methods are accessible via a newer, more consistent | |
interfaces, provided by the interfaces above. | |
Optimization | |
------------ | |
General-purpose multivariate methods: | |
.. autosummary:: | |
:toctree: generated/ | |
fmin - Nelder-Mead Simplex algorithm. | |
fmin_powell - Powell's (modified) conjugate direction method. | |
fmin_cg - Non-linear (Polak-Ribiere) conjugate gradient algorithm. | |
fmin_bfgs - Quasi-Newton method (Broydon-Fletcher-Goldfarb-Shanno). | |
fmin_ncg - Line-search Newton Conjugate Gradient. | |
Constrained multivariate methods: | |
.. autosummary:: | |
:toctree: generated/ | |
fmin_l_bfgs_b - Zhu, Byrd, and Nocedal's constrained optimizer. | |
fmin_tnc - Truncated Newton code. | |
fmin_cobyla - Constrained optimization by linear approximation. | |
fmin_slsqp - Minimization using sequential least-squares programming. | |
Univariate (scalar) minimization methods: | |
.. autosummary:: | |
:toctree: generated/ | |
fminbound - Bounded minimization of a scalar function. | |
brent - 1-D function minimization using Brent method. | |
golden - 1-D function minimization using Golden Section method. | |
Least-squares | |
------------- | |
.. autosummary:: | |
:toctree: generated/ | |
leastsq - Minimize the sum of squares of M equations in N unknowns. | |
Root finding | |
------------ | |
General nonlinear solvers: | |
.. autosummary:: | |
:toctree: generated/ | |
fsolve - Non-linear multivariable equation solver. | |
broyden1 - Broyden's first method. | |
broyden2 - Broyden's second method. | |
NoConvergence - Exception raised when nonlinear solver does not converge. | |
Large-scale nonlinear solvers: | |
.. autosummary:: | |
:toctree: generated/ | |
newton_krylov | |
anderson | |
BroydenFirst | |
InverseJacobian | |
KrylovJacobian | |
Simple iteration solvers: | |
.. autosummary:: | |
:toctree: generated/ | |
excitingmixing | |
linearmixing | |
diagbroyden | |
""" # noqa: E501 | |
from ._optimize import * | |
from ._minimize import * | |
from ._root import * | |
from ._root_scalar import * | |
from ._minpack_py import * | |
from ._zeros_py import * | |
from ._lbfgsb_py import fmin_l_bfgs_b, LbfgsInvHessProduct | |
from ._tnc import fmin_tnc | |
from ._cobyla_py import fmin_cobyla | |
from ._nonlin import * | |
from ._slsqp_py import fmin_slsqp | |
from ._nnls import nnls | |
from ._basinhopping import basinhopping | |
from ._linprog import linprog, linprog_verbose_callback | |
from ._lsap import linear_sum_assignment | |
from ._differentialevolution import differential_evolution | |
from ._lsq import least_squares, lsq_linear | |
from ._isotonic import isotonic_regression | |
from ._constraints import (NonlinearConstraint, | |
LinearConstraint, | |
Bounds) | |
from ._hessian_update_strategy import HessianUpdateStrategy, BFGS, SR1 | |
from ._shgo import shgo | |
from ._dual_annealing import dual_annealing | |
from ._qap import quadratic_assignment | |
from ._direct_py import direct | |
from ._milp import milp | |
# Deprecated namespaces, to be removed in v2.0.0 | |
from . import ( | |
cobyla, lbfgsb, linesearch, minpack, minpack2, moduleTNC, nonlin, optimize, | |
slsqp, tnc, zeros | |
) | |
__all__ = [s for s in dir() if not s.startswith('_')] | |
from scipy._lib._testutils import PytestTester | |
test = PytestTester(__name__) | |
del PytestTester | |