Ejemplo n.º 1
0
def test_rotation_270_deg():
    '''
    Tests the 270° copula rotation.
    '''
    samples = np.array([np.linspace(0, 1, 5), np.linspace(0.2, 0.8, 5)]).T

    # Clayton copula family rotated 270°
    copula = ClaytonCopula(5, rotation='270°')
    # Comparison values
    r_logpdf = np.array(
        [-np.inf, -1.7680858282, 0.9946292379, -2.5713221880, -np.inf])
    r_pdf = np.array([0.0, 0.1706593477, 2.7037217178, 0.0764344179, 0.0])
    r_logcdf = np.array([
        -38.123095, -6.7509119186, -2.7590553856, -0.9153652928, -0.2231435513
    ])
    r_cdf = np.array([0.0, 0.0011698124, 0.0633515829, 0.400370347, 0.8])
    r_ccdf = np.array([0.0, 0.0198871044, 0.5564206557, 0.996791538, 1.0])
    r_ppcf = np.array([0.0, 0.547275029, 0.4788690972, 0.4493004266, 1.0])
    p_logpdf = copula.logpdf(samples)
    p_pdf = copula.pdf(samples)
    p_logcdf = copula.logcdf(samples)
    p_cdf = copula.cdf(samples)
    p_ccdf = copula.ccdf(samples)
    p_ppcf = copula.ppcf(samples)
    assert_allclose(p_logpdf, r_logpdf)
    assert_allclose(p_pdf, r_pdf)
    assert_allclose(p_logcdf, r_logcdf)
    assert_allclose(p_cdf, r_cdf, atol=1e-10)
    assert_allclose(p_ccdf, r_ccdf, atol=1e-10)
    assert_allclose(p_ppcf, r_ppcf, atol=1e-10)
Ejemplo n.º 2
0
def test_rotation_90_deg():
    '''
    Tests the 90° copula rotation.
    '''
    samples = np.array([np.linspace(0, 1, 5), np.linspace(0.2, 0.8, 5)]).T

    # Clayton copula family rotated 90°
    copula = ClaytonCopula(5, rotation='90°')
    # Comparison values
    r_logpdf = np.array(
        [-np.inf, -2.571322188, 0.9946292379, -1.7680858282, -np.inf])
    r_pdf = np.array([0.0, 0.0764344179, 2.7037217178, 0.1706593477, 0.0])
    r_logcdf = np.array(
        [-np.inf, -7.9010702481, -2.7590553856, -0.9133704691, -0.2231435513])
    r_cdf = np.array([0.0, 0.000370347, 0.0633515829, 0.4011698124, 0.8])
    r_ccdf = np.array([0.0, 0.003208462, 0.4435793443, 0.9801128956, 1.0])
    r_ppcf = np.array([0.0, 0.5506995734, 0.5211309028, 0.452724971, 1.0])
    p_logpdf = copula.logpdf(samples)
    p_pdf = copula.pdf(samples)
    p_logcdf = copula.logcdf(samples)
    p_cdf = copula.cdf(samples)
    p_ccdf = copula.ccdf(samples)
    p_ppcf = copula.ppcf(samples)
    assert_allclose(p_logpdf, r_logpdf)
    assert_allclose(p_pdf, r_pdf)
    assert_allclose(p_logcdf, r_logcdf)
    assert_allclose(p_cdf, r_cdf)
    assert_allclose(p_ccdf, r_ccdf)
    assert_allclose(p_ppcf, r_ppcf)
Ejemplo n.º 3
0
def test_rotation_180_deg():
    '''
    Tests the 180° copula rotation.
    '''
    samples = np.array([np.linspace(0, 1, 5), np.linspace(0.2, 0.8, 5)]).T

    # Clayton copula family rotated 180°
    copula = ClaytonCopula(5, rotation='180°')
    # Comparison values
    r_logpdf = np.array(
        [-np.inf, 0.6666753203, 0.9946292379, 0.7858645247, -np.inf])
    r_pdf = np.array([0.0, 1.9477508961, 2.7037217178, 2.1943031503, 0.0])
    r_logcdf = np.array(
        [-np.inf, -1.5602819348, -0.8286269453, -0.4437013452, -0.2231435513])
    r_cdf = np.array([0.0, 0.2100768349, 0.4366484171, 0.6416570262, 0.8])
    r_ccdf = np.array([0.0, 0.3163606244, 0.5564206557, 0.8916601339, 1.0])
    r_ppcf = np.array([0.0, 0.2140692068, 0.4788690972, 0.7005153398, 1.0])
    p_logpdf = copula.logpdf(samples)
    p_pdf = copula.pdf(samples)
    p_logcdf = copula.logcdf(samples)
    p_cdf = copula.cdf(samples)
    p_ccdf = copula.ccdf(samples)
    p_ppcf = copula.ppcf(samples)
    assert_allclose(p_logpdf, r_logpdf)
    assert_allclose(p_pdf, r_pdf)
    assert_allclose(p_logcdf, r_logcdf)
    assert_allclose(p_cdf, r_cdf)
    assert_allclose(p_ccdf, r_ccdf)
    assert_allclose(p_ppcf, r_ppcf)
Ejemplo n.º 4
0
def test_cdf():
    '''
    Tests the cumulative distribution function.
    '''
    samples = np.array([np.linspace(0, 1, 5), np.linspace(0.2, 0.8, 5)]).T

    # Independence copula
    independence_copula = IndependenceCopula()
    # Comparison values
    r_cdf = np.array([0.0, 0.0875, 0.25, 0.4875, 0.8])
    p_cdf = independence_copula.cdf(samples)
    assert_allclose(p_cdf, r_cdf)

    # Gaussian copula family
    gaussian_copula = GaussianCopula(0.5)
    # Comparison values
    r_cdf = np.array([0.0, 0.1520333540, 0.3333333333, 0.5520333540, 0.8])
    p_cdf = gaussian_copula.cdf(samples)
    assert_allclose(p_cdf, r_cdf)

    # Clayton copula family
    clayton_copula = ClaytonCopula(5)
    # Comparison values
    r_cdf = np.array([0.0, 0.2416570262, 0.4366484171, 0.6100768349, 0.8])
    p_cdf = clayton_copula.cdf(samples)
    assert_allclose(p_cdf, r_cdf)

    # Frank copula family
    frank_copula = FrankCopula(5)
    # Comparison values
    r_cdf = np.array([0.0, 0.1800378858, 0.3771485107, 0.5800378858, 0.8])
    p_cdf = frank_copula.cdf(samples)
    assert_allclose(p_cdf, r_cdf)