"""Tests for module regularization path""" # Author: Haoran Wu # # License: MIT License import numpy as np import ot def test_fully_relaxed_path(): n_source = 50 # nb source samples (gaussian) n_target = 40 # nb target samples (gaussian) mu = np.array([0, 0]) cov = np.array([[1, 0], [0, 2]]) np.random.seed(0) xs = ot.datasets.make_2D_samples_gauss(n_source, mu, cov) xt = ot.datasets.make_2D_samples_gauss(n_target, mu, cov) # source and target distributions a = ot.utils.unif(n_source) b = ot.utils.unif(n_target) # loss matrix M = ot.dist(xs, xt) M /= M.max() t, _, _ = ot.regpath.regularization_path(a, b, M, reg=1e-8, semi_relaxed=False) G = t.reshape((n_source, n_target)) np.testing.assert_allclose(a, G.sum(1), atol=1e-05) np.testing.assert_allclose(b, G.sum(0), atol=1e-05) def test_semi_relaxed_path(): n_source = 50 # nb source samples (gaussian) n_target = 40 # nb target samples (gaussian) mu = np.array([0, 0]) cov = np.array([[1, 0], [0, 2]]) np.random.seed(0) xs = ot.datasets.make_2D_samples_gauss(n_source, mu, cov) xt = ot.datasets.make_2D_samples_gauss(n_target, mu, cov) # source and target distributions a = ot.utils.unif(n_source) b = ot.utils.unif(n_target) # loss matrix M = ot.dist(xs, xt) M /= M.max() t, _, _ = ot.regpath.regularization_path(a, b, M, reg=1e-8, semi_relaxed=True) G = t.reshape((n_source, n_target)) np.testing.assert_allclose(a, G.sum(1), atol=1e-05) np.testing.assert_allclose(b, G.sum(0), atol=1e-10)