Esempio n. 1
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class TestPCoAEigenResults(object):
    def setup(self):
        dist_matrix = DistanceMatrix.read(get_data_path('PCoA_sample_data_3'))
        self.ordination = PCoA(dist_matrix)

        self.ids = ['PC.636', 'PC.635', 'PC.356', 'PC.481', 'PC.354', 'PC.593',
                    'PC.355', 'PC.607', 'PC.634']

    def test_values(self):
        results = self.ordination.scores()

        npt.assert_almost_equal(len(results.eigvals), len(results.site[0]))

        expected = np.loadtxt(get_data_path('exp_PCoAEigenResults_site'))
        npt.assert_almost_equal(*normalize_signs(expected, results.site))

        expected = np.array([0.51236726, 0.30071909, 0.26791207, 0.20898868,
                             0.19169895, 0.16054235,  0.15017696,  0.12245775,
                             0.0])
        npt.assert_almost_equal(results.eigvals, expected)

        expected = np.array([0.2675738328, 0.157044696, 0.1399118638,
                             0.1091402725, 0.1001110485, 0.0838401162,
                             0.0784269939, 0.0639511764, 0.0])
        npt.assert_almost_equal(results.proportion_explained, expected)

        npt.assert_equal(results.site_ids, self.ids)
Esempio n. 2
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class TestPCoAEigenResults(object):
    def setup(self):
        dist_matrix = DistanceMatrix.read(get_data_path('PCoA_sample_data_3'))
        self.ordination = PCoA(dist_matrix)

        self.ids = [
            'PC.636', 'PC.635', 'PC.356', 'PC.481', 'PC.354', 'PC.593',
            'PC.355', 'PC.607', 'PC.634'
        ]

    def test_values(self):
        results = self.ordination.scores()

        npt.assert_almost_equal(len(results.eigvals), len(results.site[0]))

        expected = np.loadtxt(get_data_path('exp_PCoAEigenResults_site'))
        npt.assert_almost_equal(*normalize_signs(expected, results.site))

        expected = np.array([
            0.51236726, 0.30071909, 0.26791207, 0.20898868, 0.19169895,
            0.16054235, 0.15017696, 0.12245775, 0.0
        ])
        npt.assert_almost_equal(results.eigvals, expected)

        expected = np.array([
            0.2675738328, 0.157044696, 0.1399118638, 0.1091402725,
            0.1001110485, 0.0838401162, 0.0784269939, 0.0639511764, 0.0
        ])
        npt.assert_almost_equal(results.proportion_explained, expected)

        npt.assert_equal(results.site_ids, self.ids)
Esempio n. 3
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class TestPCoAResultsExtensive(object):
    def setup(self):
        matrix = np.loadtxt(get_data_path('PCoA_sample_data_2'))
        self.ids = [str(i) for i in range(matrix.shape[0])]
        dist_matrix = DistanceMatrix(matrix, self.ids)
        self.ordination = PCoA(dist_matrix)

    def test_values(self):
        results = self.ordination.scores()

        npt.assert_equal(len(results.eigvals), len(results.site[0]))

        expected = np.array([[-0.028597, 0.22903853, 0.07055272,
                              0.26163576, 0.28398669, 0.0],
                             [0.37494056, 0.22334055, -0.20892914,
                              0.05057395, -0.18710366, 0.0],
                             [-0.33517593, -0.23855979, -0.3099887,
                              0.11521787, -0.05021553, 0.0],
                             [0.25412394, -0.4123464, 0.23343642,
                              0.06403168, -0.00482608, 0.0],
                             [-0.28256844, 0.18606911, 0.28875631,
                              -0.06455635, -0.21141632, 0.0],
                             [0.01727687, 0.012458, -0.07382761,
                              -0.42690292, 0.1695749, 0.0]])
        npt.assert_almost_equal(*normalize_signs(expected, results.site))

        expected = np.array([0.3984635, 0.36405689, 0.28804535, 0.27479983,
                            0.19165361, 0.0])
        npt.assert_almost_equal(results.eigvals, expected)

        expected = np.array([0.2626621381, 0.2399817314, 0.1898758748,
                             0.1811445992, 0.1263356565, 0.0])
        npt.assert_almost_equal(results.proportion_explained, expected)

        npt.assert_equal(results.site_ids, self.ids)
Esempio n. 4
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    def test_values(self):
        """Adapted from cogent's `test_principal_coordinate_analysis`:
        "I took the example in the book (see intro info), and did the
        principal coordinates analysis, plotted the data and it looked
        right"."""
        with warnings.catch_warnings():
            warnings.filterwarnings('ignore', category=RuntimeWarning)
            ordination = PCoA(self.dist_matrix)
        scores = ordination.scores()

        exp_eigvals = np.array([
            0.73599103, 0.26260032, 0.14926222, 0.06990457, 0.02956972,
            0.01931184, 0., 0., 0., 0., 0., 0., 0., 0.
        ])
        exp_site = np.loadtxt(get_data_path('exp_PCoAzeros_site'))
        exp_prop_expl = np.array([
            0.58105792, 0.20732046, 0.1178411, 0.05518899, 0.02334502,
            0.01524651, 0., 0., 0., 0., 0., 0., 0., 0.
        ])
        exp_site_ids = [
            '0', '1', '2', '3', '4', '5', '6', '7', '8', '9', '10', '11', '12',
            '13'
        ]
        # Note the absolute value because column can have signs swapped
        npt.assert_almost_equal(scores.eigvals, exp_eigvals)
        npt.assert_almost_equal(np.abs(scores.site), exp_site)
        npt.assert_almost_equal(scores.proportion_explained, exp_prop_expl)
        npt.assert_equal(scores.site_ids, exp_site_ids)
Esempio n. 5
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class TestPCoAResultsExtensive(object):
    def setup(self):
        matrix = np.loadtxt(get_data_path('PCoA_sample_data_2'))
        self.ids = [str(i) for i in range(matrix.shape[0])]
        dist_matrix = DistanceMatrix(matrix, self.ids)
        self.ordination = PCoA(dist_matrix)

    def test_values(self):
        results = self.ordination.scores()

        npt.assert_equal(len(results.eigvals), len(results.site[0]))

        expected = np.array([[-0.028597, 0.22903853, 0.07055272,
                              0.26163576, 0.28398669, 0.0],
                             [0.37494056, 0.22334055, -0.20892914,
                              0.05057395, -0.18710366, 0.0],
                             [-0.33517593, -0.23855979, -0.3099887,
                              0.11521787, -0.05021553, 0.0],
                             [0.25412394, -0.4123464, 0.23343642,
                              0.06403168, -0.00482608, 0.0],
                             [-0.28256844, 0.18606911, 0.28875631,
                              -0.06455635, -0.21141632, 0.0],
                             [0.01727687, 0.012458, -0.07382761,
                              -0.42690292, 0.1695749, 0.0]])
        npt.assert_almost_equal(*normalize_signs(expected, results.site))

        expected = np.array([0.3984635, 0.36405689, 0.28804535, 0.27479983,
                            0.19165361, 0.0])
        npt.assert_almost_equal(results.eigvals, expected)

        expected = np.array([0.2626621381, 0.2399817314, 0.1898758748,
                             0.1811445992, 0.1263356565, 0.0])
        npt.assert_almost_equal(results.proportion_explained, expected)

        npt.assert_equal(results.site_ids, self.ids)
Esempio n. 6
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def pcoa(lines):
    """Run PCoA on the distance matrix present on lines"""
    # Parse the distance matrix
    dist_mtx = DistanceMatrix.read(lines)
    # Create the PCoA object
    pcoa_obj = PCoA(dist_mtx)
    # Get the PCoA results and return them
    return pcoa_obj.scores()
def pcoa(lines):
    """Run PCoA on the distance matrix present on lines"""
    # Parse the distance matrix
    dist_mtx = DistanceMatrix.read(lines)
    # Create the PCoA object
    pcoa_obj = PCoA(dist_mtx)
    # Get the PCoA results and return them
    return pcoa_obj.scores()
Esempio n. 8
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    def test_values(self):
        """Adapted from cogent's `test_principal_coordinate_analysis`:
        "I took the example in the book (see intro info), and did the
        principal coordinates analysis, plotted the data and it looked
        right"."""
        with warnings.catch_warnings():
            warnings.filterwarnings("ignore", category=RuntimeWarning)
            ordination = PCoA(self.dist_matrix)
        scores = ordination.scores()

        exp_eigvals = np.array(
            [
                0.73599103,
                0.26260032,
                0.14926222,
                0.06990457,
                0.02956972,
                0.01931184,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
            ]
        )
        exp_site = np.loadtxt(get_data_path("exp_PCoAzeros_site"))
        exp_prop_expl = np.array(
            [
                0.58105792,
                0.20732046,
                0.1178411,
                0.05518899,
                0.02334502,
                0.01524651,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
                0.0,
            ]
        )
        exp_site_ids = ["0", "1", "2", "3", "4", "5", "6", "7", "8", "9", "10", "11", "12", "13"]
        # Note the absolute value because column can have signs swapped
        npt.assert_almost_equal(scores.eigvals, exp_eigvals)
        npt.assert_almost_equal(np.abs(scores.site), exp_site)
        npt.assert_almost_equal(scores.proportion_explained, exp_prop_expl)
        npt.assert_equal(scores.site_ids, exp_site_ids)