Projekt_AI-Automatyczny_saper/venv/Lib/site-packages/scipy/optimize/_lsap.py

106 lines
3.9 KiB
Python

# Wrapper for the shortest augmenting path algorithm for solving the
# rectangular linear sum assignment problem. The original code was an
# implementation of the Hungarian algorithm (Kuhn-Munkres) taken from
# scikit-learn, based on original code by Brian Clapper and adapted to NumPy
# by Gael Varoquaux. Further improvements by Ben Root, Vlad Niculae, Lars
# Buitinck, and Peter Larsen.
#
# Copyright (c) 2008 Brian M. Clapper <bmc@clapper.org>, Gael Varoquaux
# Author: Brian M. Clapper, Gael Varoquaux
# License: 3-clause BSD
import numpy as np
from . import _lsap_module
def linear_sum_assignment(cost_matrix, maximize=False):
"""Solve the linear sum assignment problem.
The linear sum assignment problem is also known as minimum weight matching
in bipartite graphs. A problem instance is described by a matrix C, where
each C[i,j] is the cost of matching vertex i of the first partite set
(a "worker") and vertex j of the second set (a "job"). The goal is to find
a complete assignment of workers to jobs of minimal cost.
Formally, let X be a boolean matrix where :math:`X[i,j] = 1` iff row i is
assigned to column j. Then the optimal assignment has cost
.. math::
\\min \\sum_i \\sum_j C_{i,j} X_{i,j}
where, in the case where the matrix X is square, each row is assigned to
exactly one column, and each column to exactly one row.
This function can also solve a generalization of the classic assignment
problem where the cost matrix is rectangular. If it has more rows than
columns, then not every row needs to be assigned to a column, and vice
versa.
The problem is also solved for sparse inputs in
:func:`scipy.sparse.csgraph.min_weight_full_bipartite_matching` which
may perform better if the input is sparse, or for certain classes of
problems, such as uniformly distributed costs.
Parameters
----------
cost_matrix : array
The cost matrix of the bipartite graph.
maximize : bool (default: False)
Calculates a maximum weight matching if true.
Returns
-------
row_ind, col_ind : array
An array of row indices and one of corresponding column indices giving
the optimal assignment. The cost of the assignment can be computed
as ``cost_matrix[row_ind, col_ind].sum()``. The row indices will be
sorted; in the case of a square cost matrix they will be equal to
``numpy.arange(cost_matrix.shape[0])``.
Notes
-----
.. versionadded:: 0.17.0
References
----------
1. https://en.wikipedia.org/wiki/Assignment_problem
2. DF Crouse. On implementing 2D rectangular assignment algorithms.
*IEEE Transactions on Aerospace and Electronic Systems*,
52(4):1679-1696, August 2016, :doi:`10.1109/TAES.2016.140952`
Examples
--------
>>> cost = np.array([[4, 1, 3], [2, 0, 5], [3, 2, 2]])
>>> from scipy.optimize import linear_sum_assignment
>>> row_ind, col_ind = linear_sum_assignment(cost)
>>> col_ind
array([1, 0, 2])
>>> cost[row_ind, col_ind].sum()
5
"""
cost_matrix = np.asarray(cost_matrix)
if cost_matrix.ndim != 2:
raise ValueError("expected a matrix (2-D array), got a %r array"
% (cost_matrix.shape,))
if not (np.issubdtype(cost_matrix.dtype, np.number) or
cost_matrix.dtype == np.dtype(np.bool_)):
raise ValueError("expected a matrix containing numerical entries, got %s"
% (cost_matrix.dtype,))
if maximize:
cost_matrix = -cost_matrix
cost_matrix = cost_matrix.astype(np.double)
# The algorithm expects more columns than rows in the cost matrix.
if cost_matrix.shape[1] < cost_matrix.shape[0]:
a, b = _lsap_module.calculate_assignment(cost_matrix.T)
indices = np.argsort(b)
return (b[indices], a[indices])
else:
return _lsap_module.calculate_assignment(cost_matrix)