Beispiel #1
0
class TestCAResults(object):
    def setup(self):
        """Data from table 9.11 in Legendre & Legendre 1998."""
        self.X = np.loadtxt(get_data_path('L&L_CA_data'))
        self.ordination = CA(self.X, ['Site1', 'Site2', 'Site3'],
                             ['Species1', 'Species2', 'Species3'])

    def test_scaling2(self):
        scores = self.ordination.scores(scaling=2)
        # p. 460 L&L 1998
        F_hat = np.array([[0.40887, -0.06955],
                          [-0.11539,  0.29977],
                          [-0.30997, -0.18739]])
        npt.assert_almost_equal(*normalize_signs(F_hat, scores.species),
                                decimal=5)
        V_hat = np.array([[-0.84896, -0.88276],
                          [-0.22046,  1.34482],
                          [1.66697, -0.47032]])
        npt.assert_almost_equal(*normalize_signs(V_hat, scores.site),
                                decimal=5)

    def test_scaling1(self):
        scores = self.ordination.scores(scaling=1)
        # p. 458
        V = np.array([[1.31871, -0.34374],
                      [-0.37215,  1.48150],
                      [-0.99972, -0.92612]])
        npt.assert_almost_equal(*normalize_signs(V, scores.species), decimal=5)
        F = np.array([[-0.26322, -0.17862],
                      [-0.06835,  0.27211],
                      [0.51685, -0.09517]])
        npt.assert_almost_equal(*normalize_signs(F, scores.site), decimal=5)

    def test_maintain_chi_square_distance_scaling1(self):
        """In scaling 1, chi^2 distance among rows (sites) is equal to
        euclidean distance between them in transformed space."""
        frequencies = self.X / self.X.sum()
        chi2_distances = chi_square_distance(frequencies)
        transformed_sites = self.ordination.scores(1).site
        euclidean_distances = pdist(transformed_sites, 'euclidean')
        npt.assert_almost_equal(chi2_distances, euclidean_distances)

    def test_maintain_chi_square_distance_scaling2(self):
        """In scaling 2, chi^2 distance among columns (species) is
        equal to euclidean distance between them in transformed space."""
        frequencies = self.X / self.X.sum()
        chi2_distances = chi_square_distance(frequencies, between_rows=False)
        transformed_species = self.ordination.scores(2).species
        euclidean_distances = pdist(transformed_species, 'euclidean')
        npt.assert_almost_equal(chi2_distances, euclidean_distances)
Beispiel #2
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class TestCAResults(object):
    def setup(self):
        """Data from table 9.11 in Legendre & Legendre 1998."""
        self.X = np.loadtxt(get_data_path('L&L_CA_data'))
        self.ordination = CA(self.X, ['Site1', 'Site2', 'Site3'],
                             ['Species1', 'Species2', 'Species3'])

    def test_scaling2(self):
        scores = self.ordination.scores(scaling=2)
        # p. 460 L&L 1998
        F_hat = np.array([[0.40887, -0.06955],
                          [-0.11539,  0.29977],
                          [-0.30997, -0.18739]])
        npt.assert_almost_equal(*normalize_signs(F_hat, scores.species),
                                decimal=5)
        V_hat = np.array([[-0.84896, -0.88276],
                          [-0.22046,  1.34482],
                          [1.66697, -0.47032]])
        npt.assert_almost_equal(*normalize_signs(V_hat, scores.site),
                                decimal=5)

    def test_scaling1(self):
        scores = self.ordination.scores(scaling=1)
        # p. 458
        V = np.array([[1.31871, -0.34374],
                      [-0.37215,  1.48150],
                      [-0.99972, -0.92612]])
        npt.assert_almost_equal(*normalize_signs(V, scores.species), decimal=5)
        F = np.array([[-0.26322, -0.17862],
                      [-0.06835,  0.27211],
                      [0.51685, -0.09517]])
        npt.assert_almost_equal(*normalize_signs(F, scores.site), decimal=5)

    def test_maintain_chi_square_distance_scaling1(self):
        """In scaling 1, chi^2 distance among rows (sites) is equal to
        euclidean distance between them in transformed space."""
        frequencies = self.X / self.X.sum()
        chi2_distances = chi_square_distance(frequencies)
        transformed_sites = self.ordination.scores(1).site
        euclidean_distances = pdist(transformed_sites, 'euclidean')
        npt.assert_almost_equal(chi2_distances, euclidean_distances)

    def test_maintain_chi_square_distance_scaling2(self):
        """In scaling 2, chi^2 distance among columns (species) is
        equal to euclidean distance between them in transformed space."""
        frequencies = self.X / self.X.sum()
        chi2_distances = chi_square_distance(frequencies, between_rows=False)
        transformed_species = self.ordination.scores(2).species
        euclidean_distances = pdist(transformed_species, 'euclidean')
        npt.assert_almost_equal(chi2_distances, euclidean_distances)
Beispiel #3
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 def setup(self):
     """Data from table 9.11 in Legendre & Legendre 1998."""
     self.X = np.loadtxt(get_data_path('L&L_CA_data'))
     self.ordination = CA(self.X, ['Site1', 'Site2', 'Site3'],
                          ['Species1', 'Species2', 'Species3'])
Beispiel #4
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 def test_negative(self):
     X = np.array([[1, 2], [-0.1, -2]])
     with npt.assert_raises(ValueError):
         CA(X, None, None)
Beispiel #5
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 def setup(self):
     """Data from table 9.11 in Legendre & Legendre 1998."""
     self.X = np.loadtxt(get_data_path('L&L_CA_data'))
     self.ordination = CA(self.X, ['Site1', 'Site2', 'Site3'],
                          ['Species1', 'Species2', 'Species3'])
 def setup(self):
     """Data from table 9.11 in Legendre & Legendre 1998."""
     self.X = np.loadtxt(get_data_path("L&L_CA_data"))
     self.ordination = CA(self.X, ["Site1", "Site2", "Site3"], ["Species1", "Species2", "Species3"])