316 lines
12 KiB
Python
316 lines
12 KiB
Python
"""Linear least squares with bound constraints on independent variables."""
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import numpy as np
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from numpy.linalg import norm
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from scipy.sparse import issparse, csr_matrix
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from scipy.sparse.linalg import LinearOperator, lsmr
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from scipy.optimize import OptimizeResult
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from .common import in_bounds, compute_grad
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from .trf_linear import trf_linear
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from .bvls import bvls
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def prepare_bounds(bounds, n):
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lb, ub = [np.asarray(b, dtype=float) for b in bounds]
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if lb.ndim == 0:
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lb = np.resize(lb, n)
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if ub.ndim == 0:
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ub = np.resize(ub, n)
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return lb, ub
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TERMINATION_MESSAGES = {
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-1: "The algorithm was not able to make progress on the last iteration.",
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0: "The maximum number of iterations is exceeded.",
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1: "The first-order optimality measure is less than `tol`.",
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2: "The relative change of the cost function is less than `tol`.",
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3: "The unconstrained solution is optimal."
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}
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def lsq_linear(A, b, bounds=(-np.inf, np.inf), method='trf', tol=1e-10,
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lsq_solver=None, lsmr_tol=None, max_iter=None, verbose=0):
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r"""Solve a linear least-squares problem with bounds on the variables.
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Given a m-by-n design matrix A and a target vector b with m elements,
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`lsq_linear` solves the following optimization problem::
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minimize 0.5 * ||A x - b||**2
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subject to lb <= x <= ub
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This optimization problem is convex, hence a found minimum (if iterations
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have converged) is guaranteed to be global.
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Parameters
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----------
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A : array_like, sparse matrix of LinearOperator, shape (m, n)
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Design matrix. Can be `scipy.sparse.linalg.LinearOperator`.
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b : array_like, shape (m,)
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Target vector.
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bounds : 2-tuple of array_like, optional
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Lower and upper bounds on independent variables. Defaults to no bounds.
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Each array must have shape (n,) or be a scalar, in the latter
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case a bound will be the same for all variables. Use ``np.inf`` with
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an appropriate sign to disable bounds on all or some variables.
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method : 'trf' or 'bvls', optional
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Method to perform minimization.
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* 'trf' : Trust Region Reflective algorithm adapted for a linear
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least-squares problem. This is an interior-point-like method
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and the required number of iterations is weakly correlated with
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the number of variables.
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* 'bvls' : Bounded-variable least-squares algorithm. This is
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an active set method, which requires the number of iterations
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comparable to the number of variables. Can't be used when `A` is
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sparse or LinearOperator.
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Default is 'trf'.
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tol : float, optional
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Tolerance parameter. The algorithm terminates if a relative change
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of the cost function is less than `tol` on the last iteration.
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Additionally, the first-order optimality measure is considered:
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* ``method='trf'`` terminates if the uniform norm of the gradient,
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scaled to account for the presence of the bounds, is less than
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`tol`.
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* ``method='bvls'`` terminates if Karush-Kuhn-Tucker conditions
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are satisfied within `tol` tolerance.
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lsq_solver : {None, 'exact', 'lsmr'}, optional
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Method of solving unbounded least-squares problems throughout
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iterations:
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* 'exact' : Use dense QR or SVD decomposition approach. Can't be
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used when `A` is sparse or LinearOperator.
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* 'lsmr' : Use `scipy.sparse.linalg.lsmr` iterative procedure
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which requires only matrix-vector product evaluations. Can't
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be used with ``method='bvls'``.
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If None (default), the solver is chosen based on type of `A`.
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lsmr_tol : None, float or 'auto', optional
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Tolerance parameters 'atol' and 'btol' for `scipy.sparse.linalg.lsmr`
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If None (default), it is set to ``1e-2 * tol``. If 'auto', the
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tolerance will be adjusted based on the optimality of the current
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iterate, which can speed up the optimization process, but is not always
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reliable.
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max_iter : None or int, optional
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Maximum number of iterations before termination. If None (default), it
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is set to 100 for ``method='trf'`` or to the number of variables for
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``method='bvls'`` (not counting iterations for 'bvls' initialization).
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verbose : {0, 1, 2}, optional
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Level of algorithm's verbosity:
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* 0 : work silently (default).
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* 1 : display a termination report.
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* 2 : display progress during iterations.
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Returns
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-------
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OptimizeResult with the following fields defined:
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x : ndarray, shape (n,)
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Solution found.
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cost : float
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Value of the cost function at the solution.
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fun : ndarray, shape (m,)
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Vector of residuals at the solution.
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optimality : float
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First-order optimality measure. The exact meaning depends on `method`,
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refer to the description of `tol` parameter.
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active_mask : ndarray of int, shape (n,)
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Each component shows whether a corresponding constraint is active
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(that is, whether a variable is at the bound):
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* 0 : a constraint is not active.
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* -1 : a lower bound is active.
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* 1 : an upper bound is active.
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Might be somewhat arbitrary for the `trf` method as it generates a
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sequence of strictly feasible iterates and active_mask is determined
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within a tolerance threshold.
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nit : int
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Number of iterations. Zero if the unconstrained solution is optimal.
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status : int
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Reason for algorithm termination:
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* -1 : the algorithm was not able to make progress on the last
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iteration.
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* 0 : the maximum number of iterations is exceeded.
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* 1 : the first-order optimality measure is less than `tol`.
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* 2 : the relative change of the cost function is less than `tol`.
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* 3 : the unconstrained solution is optimal.
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message : str
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Verbal description of the termination reason.
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success : bool
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True if one of the convergence criteria is satisfied (`status` > 0).
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See Also
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--------
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nnls : Linear least squares with non-negativity constraint.
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least_squares : Nonlinear least squares with bounds on the variables.
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Notes
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-----
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The algorithm first computes the unconstrained least-squares solution by
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`numpy.linalg.lstsq` or `scipy.sparse.linalg.lsmr` depending on
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`lsq_solver`. This solution is returned as optimal if it lies within the
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bounds.
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Method 'trf' runs the adaptation of the algorithm described in [STIR]_ for
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a linear least-squares problem. The iterations are essentially the same as
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in the nonlinear least-squares algorithm, but as the quadratic function
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model is always accurate, we don't need to track or modify the radius of
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a trust region. The line search (backtracking) is used as a safety net
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when a selected step does not decrease the cost function. Read more
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detailed description of the algorithm in `scipy.optimize.least_squares`.
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Method 'bvls' runs a Python implementation of the algorithm described in
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[BVLS]_. The algorithm maintains active and free sets of variables, on
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each iteration chooses a new variable to move from the active set to the
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free set and then solves the unconstrained least-squares problem on free
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variables. This algorithm is guaranteed to give an accurate solution
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eventually, but may require up to n iterations for a problem with n
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variables. Additionally, an ad-hoc initialization procedure is
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implemented, that determines which variables to set free or active
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initially. It takes some number of iterations before actual BVLS starts,
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but can significantly reduce the number of further iterations.
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References
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----------
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.. [STIR] M. A. Branch, T. F. Coleman, and Y. Li, "A Subspace, Interior,
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and Conjugate Gradient Method for Large-Scale Bound-Constrained
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Minimization Problems," SIAM Journal on Scientific Computing,
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Vol. 21, Number 1, pp 1-23, 1999.
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.. [BVLS] P. B. Start and R. L. Parker, "Bounded-Variable Least-Squares:
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an Algorithm and Applications", Computational Statistics, 10,
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129-141, 1995.
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Examples
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--------
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In this example, a problem with a large sparse matrix and bounds on the
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variables is solved.
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>>> from scipy.sparse import rand
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>>> from scipy.optimize import lsq_linear
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...
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>>> np.random.seed(0)
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...
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>>> m = 20000
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>>> n = 10000
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...
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>>> A = rand(m, n, density=1e-4)
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>>> b = np.random.randn(m)
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...
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>>> lb = np.random.randn(n)
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>>> ub = lb + 1
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...
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>>> res = lsq_linear(A, b, bounds=(lb, ub), lsmr_tol='auto', verbose=1)
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# may vary
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The relative change of the cost function is less than `tol`.
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Number of iterations 16, initial cost 1.5039e+04, final cost 1.1112e+04,
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first-order optimality 4.66e-08.
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"""
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if method not in ['trf', 'bvls']:
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raise ValueError("`method` must be 'trf' or 'bvls'")
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if lsq_solver not in [None, 'exact', 'lsmr']:
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raise ValueError("`solver` must be None, 'exact' or 'lsmr'.")
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if verbose not in [0, 1, 2]:
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raise ValueError("`verbose` must be in [0, 1, 2].")
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if issparse(A):
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A = csr_matrix(A)
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elif not isinstance(A, LinearOperator):
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A = np.atleast_2d(np.asarray(A))
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if method == 'bvls':
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if lsq_solver == 'lsmr':
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raise ValueError("method='bvls' can't be used with "
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"lsq_solver='lsmr'")
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if not isinstance(A, np.ndarray):
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raise ValueError("method='bvls' can't be used with `A` being "
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"sparse or LinearOperator.")
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if lsq_solver is None:
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if isinstance(A, np.ndarray):
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lsq_solver = 'exact'
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else:
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lsq_solver = 'lsmr'
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elif lsq_solver == 'exact' and not isinstance(A, np.ndarray):
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raise ValueError("`exact` solver can't be used when `A` is "
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"sparse or LinearOperator.")
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if len(A.shape) != 2: # No ndim for LinearOperator.
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raise ValueError("`A` must have at most 2 dimensions.")
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if len(bounds) != 2:
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raise ValueError("`bounds` must contain 2 elements.")
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if max_iter is not None and max_iter <= 0:
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raise ValueError("`max_iter` must be None or positive integer.")
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m, n = A.shape
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b = np.atleast_1d(b)
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if b.ndim != 1:
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raise ValueError("`b` must have at most 1 dimension.")
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if b.size != m:
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raise ValueError("Inconsistent shapes between `A` and `b`.")
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lb, ub = prepare_bounds(bounds, n)
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if lb.shape != (n,) and ub.shape != (n,):
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raise ValueError("Bounds have wrong shape.")
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if np.any(lb >= ub):
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raise ValueError("Each lower bound must be strictly less than each "
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"upper bound.")
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if lsq_solver == 'exact':
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x_lsq = np.linalg.lstsq(A, b, rcond=-1)[0]
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elif lsq_solver == 'lsmr':
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x_lsq = lsmr(A, b, atol=tol, btol=tol)[0]
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if in_bounds(x_lsq, lb, ub):
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r = A @ x_lsq - b
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cost = 0.5 * np.dot(r, r)
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termination_status = 3
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termination_message = TERMINATION_MESSAGES[termination_status]
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g = compute_grad(A, r)
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g_norm = norm(g, ord=np.inf)
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if verbose > 0:
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print(termination_message)
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print("Final cost {0:.4e}, first-order optimality {1:.2e}"
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.format(cost, g_norm))
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return OptimizeResult(
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x=x_lsq, fun=r, cost=cost, optimality=g_norm,
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active_mask=np.zeros(n), nit=0, status=termination_status,
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message=termination_message, success=True)
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if method == 'trf':
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res = trf_linear(A, b, x_lsq, lb, ub, tol, lsq_solver, lsmr_tol,
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max_iter, verbose)
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elif method == 'bvls':
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res = bvls(A, b, x_lsq, lb, ub, tol, max_iter, verbose)
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res.message = TERMINATION_MESSAGES[res.status]
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res.success = res.status > 0
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if verbose > 0:
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print(res.message)
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print("Number of iterations {0}, initial cost {1:.4e}, "
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"final cost {2:.4e}, first-order optimality {3:.2e}."
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.format(res.nit, res.initial_cost, res.cost, res.optimality))
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del res.initial_cost
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return res
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