Beispiel #1
0
def test_join():
    p = Join(components=[Normal(mu=0), Normal(mu=1), Normal(mu=2)])
    assert p.ndim == 3
    assert len(p.parameters_) == 6

    X = p.rvs(10000, random_state=1)
    assert X.shape == (10000, 3)
    assert np.abs(np.mean(X[:, 0]) - 0.) < 0.05
    assert np.abs(np.mean(X[:, 1]) - 1.) < 0.05
    assert np.abs(np.mean(X[:, 2]) - 2.) < 0.05
    assert_array_almost_equal(-np.log(p.pdf(X)), p.nnlf(X))
Beispiel #2
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def test_join():
    p = Join(components=[Normal(mu=0, random_state=0),
                         Normal(mu=1, random_state=1),
                         Normal(mu=2, random_state=2)], random_state=0)
    assert p.ndim == 3
    assert len(p.parameters_) == 6

    X = p.rvs(10000)
    assert X.shape == (10000, 3)
    assert np.abs(np.mean(X[:, 0]) - 0.) < 0.05
    assert np.abs(np.mean(X[:, 1]) - 1.) < 0.05
    assert np.abs(np.mean(X[:, 2]) - 2.) < 0.05
    assert_array_almost_equal(-np.log(p.pdf(X)), p.nnlf(X))
Beispiel #3
0
def test_join_non_theano():
    h0 = Histogram(interpolation="linear", bins=30)
    h1 = Histogram(interpolation="linear", bins=30)
    h2 = Histogram(interpolation="linear", bins=30)

    h0.fit(Normal(mu=0, random_state=0).rvs(10000))
    h1.fit(Normal(mu=1, random_state=1).rvs(10000))
    h2.fit(Normal(mu=2, random_state=2).rvs(10000))

    p = Join(components=[h0, h1, h2], random_state=0)
    assert p.ndim == 3
    assert len(p.parameters_) == 0

    X = p.rvs(10000)
    assert X.shape == (10000, 3)
    assert np.abs(np.mean(X[:, 0]) - 0.) < 0.05
    assert np.abs(np.mean(X[:, 1]) - 1.) < 0.05
    assert np.abs(np.mean(X[:, 2]) - 2.) < 0.05
    assert_array_almost_equal(-np.log(p.pdf(X)), p.nnlf(X))