Ejemplo n.º 1
0
def test_special_sparse_dot():
    # Test the function that computes np.dot(W, H), only where X is non zero.
    n_samples = 10
    n_features = 5
    n_components = 3
    rng = np.random.mtrand.RandomState(42)
    X = rng.randn(n_samples, n_features)
    np.clip(X, 0, None, out=X)
    X_csr = sp.csr_matrix(X)

    W = np.abs(rng.randn(n_samples, n_components))
    H = np.abs(rng.randn(n_components, n_features))

    WH_safe = nmf._special_sparse_dot(W, H, X_csr)
    WH = nmf._special_sparse_dot(W, H, X)

    # test that both results have same values, in X_csr nonzero elements
    ii, jj = X_csr.nonzero()
    WH_safe_data = np.asarray(WH_safe[ii, jj]).ravel()
    assert_array_almost_equal(WH_safe_data, WH[ii, jj], decimal=10)

    # test that WH_safe and X_csr have the same sparse structure
    assert_array_equal(WH_safe.indices, X_csr.indices)
    assert_array_equal(WH_safe.indptr, X_csr.indptr)
    assert_array_equal(WH_safe.shape, X_csr.shape)
Ejemplo n.º 2
0
def test_special_sparse_dot():
    # Test the function that computes np.dot(W, H), only where X is non zero.
    n_samples = 10
    n_features = 5
    n_components = 3
    rng = np.random.mtrand.RandomState(42)
    X = rng.randn(n_samples, n_features)
    np.clip(X, 0, None, out=X)
    X_csr = sp.csr_matrix(X)

    W = np.abs(rng.randn(n_samples, n_components))
    H = np.abs(rng.randn(n_components, n_features))

    WH_safe = nmf._special_sparse_dot(W, H, X_csr)
    WH = nmf._special_sparse_dot(W, H, X)

    # test that both results have same values, in X_csr nonzero elements
    ii, jj = X_csr.nonzero()
    WH_safe_data = np.asarray(WH_safe[ii, jj]).ravel()
    assert_array_almost_equal(WH_safe_data, WH[ii, jj], decimal=10)

    # test that WH_safe and X_csr have the same sparse structure
    assert_array_equal(WH_safe.indices, X_csr.indices)
    assert_array_equal(WH_safe.indptr, X_csr.indptr)
    assert_array_equal(WH_safe.shape, X_csr.shape)