Beispiel #1
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 def test_list_input(self):
     """
     Check AJIVE can take a list input.
     """
     ajive = AJIVE(init_signal_ranks=[2, 3])
     ajive.fit(Xs=[self.X, self.Y])
     self.assertTrue(set(ajive.block_names) == set([0, 1]))
Beispiel #2
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def test_indiv(data):
    dat = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=dat)
    blocks = ajive.predict(return_dict=True)
    for i in np.arange(100):
        j = np.sum(blocks[0]["individual"][i] == blocks[1]["individual"][i])
        assert j == 20
Beispiel #3
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def test_ajive_plot(data):
    x = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=x)
    blocks = ajive.predict(return_dict=True)
    ajive_full_estimate_heatmaps(x, blocks)
    p = 1
    assert p == 1
Beispiel #4
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def test_ajive_plot_list(data):
    x = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=x)
    blocks = ajive.predict(return_dict=False)
    ajive_full_estimate_heatmaps(x, blocks, names=["x1", "x2"])
    p = 1
    assert p == 1
Beispiel #5
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def test_check_sparse(data):
    dat = data["sparse_views"]
    spar_mat = dat[0]
    assert np.sum(spar_mat == 0) > np.sum(spar_mat != 0)
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=dat)
    blocks = ajive.predict(return_dict=True)
    assert np.sum(np.sum(blocks[0]["individual"] == 0)) > np.sum(
        np.sum(blocks[0]["individual"] != 0))
Beispiel #6
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def test_wrong_sig(data):
    dat = data["diff_views"]
    ajive = AJIVE(init_signal_ranks=[-1, -4])
    try:
        ajive.fit(Xs=dat)
        j = 0
    except:
        j = 1
    assert j == 1
Beispiel #7
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def test_precomp_init_svd(data):
    dat = data["same_views"]
    precomp = []
    for i in dat:
        precomp.append(svd_wrapper(i))
    ajive = AJIVE(init_signal_ranks=[2, 2], joint_rank=1)
    ajive.fit(dat, precomp_init_svd=precomp)
    p = 3
    assert p == 3
Beispiel #8
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    def test_dont_store_full(self):
        """
        Make sure setting store_full = False works
        """
        ajive = AJIVE(init_signal_ranks=[2, 3], store_full=False)
        ajive.fit(Xs=[self.X, self.Y])

        self.assertTrue(ajive.blocks_[0].joint.full_ is None)
        self.assertTrue(ajive.blocks_[0].individual.full_ is None)
        self.assertTrue(ajive.blocks_[1].joint.full_ is None)
        self.assertTrue(ajive.blocks_[1].individual.full_ is None)
Beispiel #9
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    def setUp(self):

        np.random.seed(12)

        # First View
        V1_joint = np.bmat([[-1 * np.ones((10, 20))], [np.ones((10, 20))]])

        V1_joint = np.bmat([np.zeros((20, 80)), V1_joint])

        V1_indiv_t = np.bmat([
            [np.ones((4, 50))],
            [-1 * np.ones((4, 50))],
            [np.zeros((4, 50))],
            [np.ones((4, 50))],
            [-1 * np.ones((4, 50))],
        ])

        V1_indiv_b = np.bmat([[np.ones((5, 50))], [-1 * np.ones((10, 50))],
                              [np.ones((5, 50))]])

        V1_indiv_tot = np.bmat([V1_indiv_t, V1_indiv_b])

        V1_noise = np.random.normal(loc=0, scale=1, size=(20, 100))

        # Second View
        V2_joint = np.bmat([[np.ones((10, 10))], [-1 * np.ones((10, 10))]])

        V2_joint = 5000 * np.bmat([V2_joint, np.zeros((20, 10))])

        V2_indiv = 5000 * np.bmat([
            [-1 * np.ones((5, 20))],
            [np.ones((5, 20))],
            [-1 * np.ones((5, 20))],
            [np.ones((5, 20))],
        ])

        V2_noise = 5000 * np.random.normal(loc=0, scale=1, size=(20, 20))

        # View Construction

        X = V1_indiv_tot + V1_joint + V1_noise

        Y = V2_indiv + V2_joint + V2_noise

        obs_names = ["sample_{}".format(i) for i in range(X.shape[0])]
        var_names = {
            "x": ["x_var_{}".format(i) for i in range(X.shape[1])],
            "y": ["y_var_{}".format(i) for i in range(Y.shape[1])],
        }

        X = pd.DataFrame(X, index=obs_names, columns=var_names["x"])
        Y = pd.DataFrame(Y, index=obs_names, columns=var_names["y"])

        self.ajive = AJIVE(init_signal_ranks=[2, 3]).fit(Xs=[X, Y],
                                                         view_names=["x", "y"])

        self.X = X
        self.Y = Y
        self.obs_names = obs_names
        self.var_names = var_names
Beispiel #10
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def test_fit_elbows():
    n = 10
    elbows = 3
    np.random.seed(1)
    x = np.random.binomial(1, 0.6, (n**2)).reshape(n, n)
    xorth = orth(x)
    d = np.zeros(xorth.shape[0])
    for i in range(0, len(d), int(len(d) / (elbows + 1))):
        d[:i] += 10
    X = xorth.T.dot(np.diag(d)).dot(xorth)

    Xs = [X, X]

    ajive = AJIVE(n_elbows=2)
    ajive = ajive.fit(Xs)

    np.testing.assert_equal(list(ajive.init_signal_ranks_.values())[0], 4)
Beispiel #11
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    def test_centering(self):
        xmean = self.X.mean(axis=0)
        ymean = self.Y.mean(axis=0)

        self.assertTrue(np.allclose(self.ajive.centers_["x"], xmean))
        self.assertTrue(np.allclose(self.ajive.blocks_["x"].joint.m_, xmean))
        self.assertTrue(
            np.allclose(self.ajive.blocks_["x"].individual.m_, xmean))

        self.assertTrue(np.allclose(self.ajive.centers_["y"], ymean))
        self.assertTrue(np.allclose(self.ajive.blocks_["y"].joint.m_, ymean))
        self.assertTrue(
            np.allclose(self.ajive.blocks_["y"].individual.m_, ymean))

        # no centering
        ajive = AJIVE(init_signal_ranks=[2, 3], center=False)
        ajive = ajive.fit(Xs=[self.X, self.Y], view_names=["x", "y"])
        self.assertTrue(ajive.centers_["x"] is None)
        self.assertTrue(ajive.centers_["y"] is None)

        # only center x
        ajive = AJIVE(init_signal_ranks=[2, 3], center=[True, False])
        ajive = ajive.fit(Xs=[self.X, self.Y], view_names=["x", "y"])
        self.assertTrue(np.allclose(ajive.centers_["x"], xmean))
        self.assertTrue(ajive.centers_["y"] is None)
Beispiel #12
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    def test_rank0(self):
        """
        Check setting joint/individual rank to zero works
        """
        ajive = AJIVE(init_signal_ranks=[2, 3], joint_rank=0)
        ajive.fit(Xs=[self.X, self.Y])
        self.assertTrue(ajive.common_.rank == 0)
        self.assertTrue(ajive.blocks_[0].joint.rank == 0)
        self.assertTrue(ajive.blocks_[0].joint.scores_ is None)

        ajive = AJIVE(init_signal_ranks=[2, 3], indiv_ranks=[0, 1])
        ajive.fit(Xs=[self.X, self.Y])
        self.assertTrue(ajive.blocks_[0].individual.rank == 0)
        self.assertTrue(ajive.blocks_[0].individual.scores_ is None)
Beispiel #13
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def test_decomp_not_computed_ranks():
    with pytest.raises(ValueError):
        ajive = AJIVE(init_signal_ranks=[2, 2])
        ajive.get_ranks()
Beispiel #14
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def test_traditional_output(data):
    x = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=x, view_names=["x", "y"])
    ajive.predict(return_dict=False)
Beispiel #15
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def test_name_values_type(data):
    with pytest.raises(ValueError):
        x = data["same_views"]
        ajive = AJIVE(init_signal_ranks=[2, 2])
        ajive.fit(Xs=x, view_names={"jon": "first", "rich": "second"})
Beispiel #16
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def test_name_values(data):
    with pytest.raises(ValueError):
        x = data["same_views"]
        ajive = AJIVE(init_signal_ranks=[2, 2])
        ajive.fit(Xs=x, view_names=["1", "2", "3"])
Beispiel #17
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def test_n_wedin():
    ajive = AJIVE(init_signal_ranks=[2, 2], n_wedin_samples=6)
    assert ajive.n_wedin_samples == 6
Beispiel #18
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def test_joint_noise_length(data):
    dat = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2])
    ajive.fit(Xs=dat)
    blocks = ajive.predict(return_dict=True)
    assert blocks[0]["joint"].shape == blocks[0]["noise"].shape
Beispiel #19
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def test_is_fit():
    ajive = AJIVE(init_signal_ranks=[2, 2], joint_rank=2)
    assert ajive.is_fit_ == False
Beispiel #20
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def test_n_randdir():
    ajive = AJIVE(init_signal_ranks=[2, 2], n_randdir_samples=5)
    assert ajive.n_randdir_samples == 5
Beispiel #21
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def test_joint_rank(data):
    dat = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2], joint_rank=2)
    ajive.fit(Xs=dat)
    assert ajive.joint_rank == 2
Beispiel #22
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def test_indiv_rank(data):
    dat = data["same_views"]
    ajive = AJIVE(init_signal_ranks=[2, 2], indiv_ranks=[2, 1])
    ajive.fit(Xs=dat)
    assert ajive.indiv_ranks[0] == 2
Beispiel #23
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def test_check_gen_lin_op_scipy(data):
    with pytest.raises(TypeError):
        dat = data["bad_views"]
        ajive = AJIVE(init_signal_ranks=[2, 2])
        ajive.fit(Xs=dat)
Beispiel #24
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def test_check_joint_rank_large(data):
    with pytest.raises(ValueError):
        dat = data["same_views"]
        ajive = AJIVE(init_signal_ranks=[2, 2], joint_rank=5)
        ajive.fit(Xs=dat)
Beispiel #25
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def test_get_ranks(data):
    with pytest.raises(ValueError):
        ajive = AJIVE(init_signal_ranks=[2, 2])
        ajive.get_ranks()