Ejemplo n.º 1
0
def _check_graph(x, a, e, y):
    g = Graph()  # Empty graph
    g = Graph(x=x)  # Only node features
    g = Graph(a=a)  # Only adjacency
    g = Graph(x=x, a=a, e=e, y=y, extra=1)  # Complete graph with extra attribute

    # numpy
    g_np = g.numpy()
    g_gt_names = ["x", "a", "e", "y"]
    g_gt = [x, a, e, y]
    for i in range(len(g_gt)):
        assert np.all(g_np[i] == g_gt[i])

    # __getitem__
    for i in range(len(g_gt)):
        assert np.all(g.__getitem__(g_gt_names[i]) == g_gt[i])

    # __repr__
    print(g)

    # Properties
    assert g.n_nodes == n_nodes
    assert g.n_node_features == n_node_features
    assert g.n_edge_features == n_edge_features
    assert g.n_labels == n_out
    assert g.n_edges == np.count_nonzero(a)
Ejemplo n.º 2
0
 def read(self):
     return [
         Graph(x=np.random.rand(n, f),
               a=sp.csr_matrix(np.random.randint(0, 2, (n, n))),
               e=np.random.rand(n, n, s),
               y=np.ones((n, 2))) for n in ns
     ]
Ejemplo n.º 3
0
 def read(self):
     return [
         Graph(x=np.random.rand(n, f),
               a=sp.csr_matrix(np.random.randint(0, 2, (n, n))),
               e=np.random.rand(n, n, s),
               y=np.array([0., 1.])) for n in ns
     ]
Ejemplo n.º 4
0
 def read(self):
     return [
         Graph(x=np.random.rand(n, f),
               a=np.random.randint(0, 2, (n, n)),
               e=np.random.rand(n, n, s),
               y=np.array([0., 1.])) for n in Ns
     ]
Ejemplo n.º 5
0
 def read(self):
     n = 10
     return [
         Graph(x=np.random.rand(n, f),
               a=sp.csr_matrix(np.random.randint(0, 2, (n, n))),
               e=np.random.rand(n, n, s),
               y=np.array(n * [[0., 1.]]))
     ]
Ejemplo n.º 6
0
 def read(self):
     n = np.random.randint(3, 8)
     self.a = sp.csr_matrix(np.random.randint(0, 2, (n, n)))
     return [
         Graph(
             x=np.random.rand(n, f),
             e=np.random.rand(n, n, s),
             y=np.array([0.0, 1.0]),
         ) for _ in range(n_graphs)
     ]
Ejemplo n.º 7
0
def test_dataset():
    class TestDataset(Dataset):
        def read(self):
            return [
                Graph(x=np.random.rand(n, f),
                      a=np.random.randint(0, 2, (n, n)),
                      e=np.random.rand(n, n, s),
                      y=np.array([0., 1.])) for n in Ns
            ]

    d = TestDataset()

    assert d.n_node_features == f
    assert d.n_edge_features == s
    assert d.n_labels == 2

    # signature
    for k in ['x', 'a', 'e', 'y']:
        assert k in d.signature

    # __getitem__
    assert isinstance(d[0], Graph)
    assert isinstance(d[:3], Dataset)
    assert isinstance(d[[1, 3, 4]], Dataset)

    # __setitem__
    n = 100
    g = Graph(x=np.random.rand(n, f),
              a=np.random.randint(0, 2, (n, n)),
              e=np.random.rand(n, n, s),
              y=np.array([0., 1.]))

    # single assignment
    d[0] = g
    assert d[0].n_nodes == n and all([d_.n_nodes != n for d_ in d[1:]])

    # Slice assignment
    d[1:3] = [g] * 2
    assert d[1].n_nodes == n and d[2].n_nodes == n and all(
        [d_.n_nodes != n for d_ in d[3:]])

    # List assignment
    d[[3, 4]] = [g] * 2
    assert d[3].n_nodes == n and d[4].n_nodes == n and all(
        [d_.n_nodes != n for d_ in d[5:]])

    # __len__
    assert d.__len__() == n_graphs

    # __repr__
    print(d)

    # Test that shuffling doesn't crash
    np.random.shuffle(d)
Ejemplo n.º 8
0
def _check_graph(x, a, e, y):
    g = Graph()
    g = Graph(x=x)
    g = Graph(a=a)
    g = Graph(x=x, a=a, e=e, y=y)

    # numpy
    g_np = g.numpy()
    g_gt_names = ["x", "a", "e", "y"]
    g_gt = [x, a, e, y]
    for i in range(len(g_gt)):
        assert np.all(g_np[i] == g_gt[i])

    # __getitem__
    for i in range(len(g_gt)):
        assert np.all(g.__getitem__(g_gt_names[i]) == g_gt[i])

    # __repr__
    print(g)
Ejemplo n.º 9
0
def load_off(filename):
    """
    Reads an .off file into a Graph object. Node attributes are the 3d
    coordinates of the points, all faces are converted to edges.
    :param filename: path to the .off file.
    :return: a Graph
    """
    lines = open(filename, "r").read().lstrip("OF\n").splitlines()
    x, faces = _parse_off(lines)
    n = x.shape[0]
    row, col = np.vstack((faces[:, :2], faces[:, 1:], faces[:, ::2])).T
    adj = sp.csr_matrix((np.ones_like(row), (row, col)), shape=(n, n)).tolil()
    adj[col, row] = adj[row, col]
    adj = adj.T.tocsr()
    adj.data = np.clip(adj.data, 0, 1)

    return Graph(x=x, adj=adj)
Ejemplo n.º 10
0
def test_dataset():
    class TestDataset(Dataset):
        def read(self):
            return [
                Graph(
                    x=np.random.rand(n, f),
                    a=np.random.randint(0, 2, (n, n)),
                    e=np.random.rand(n, n, s),
                    y=np.array([0.0, 1.0]),
                ) for n in Ns
            ]

    d = TestDataset()

    assert d.n_node_features == f
    assert d.n_edge_features == s
    assert d.n_labels == 2

    # signature
    for k in ["x", "a", "e", "y"]:
        assert k in d.signature

    # __getitem__
    assert isinstance(d[0], Graph)
    assert isinstance(d[:3], Dataset)
    assert isinstance(d[[1, 3, 4]], Dataset)

    # __setitem__
    n = 100
    g = Graph(
        x=np.random.rand(n, f),
        a=np.random.randint(0, 2, (n, n)),
        e=np.random.rand(n, n, s),
        y=np.array([0.0, 1.0]),
    )

    # single assignment
    d[0] = g
    assert d[0].n_nodes == n and all([d_.n_nodes != n for d_ in d[1:]])

    # Slice assignment
    d[1:3] = [g] * 2
    assert (d[1].n_nodes == n and d[2].n_nodes == n
            and all([d_.n_nodes != n for d_ in d[3:]]))

    # List assignment
    d[[3, 4]] = [g] * 2
    assert (d[3].n_nodes == n and d[4].n_nodes == n
            and all([d_.n_nodes != n for d_ in d[5:]]))

    # __len__
    assert d.__len__() == n_graphs

    # __repr__
    print(d)

    # Test that shuffling doesn't crash
    np.random.shuffle(d)

    # Test apply()
    t = transforms.NormalizeSphere()
    d.apply(t)

    # Test filter
    d.filter(lambda g: g.n_nodes >= 100)

    # Test map
    t = lambda g: g.n_nodes
    d.map(t, reduce=max)