Пример #1
0
    def _make_rnn(self, seq_length=4):
        self.embedding_dim = embedding_dim = 3
        self.vocab_size = vocab_size = 10
        self.seq_length = seq_length

        def compose_network(h_prev,
                            inp,
                            embedding_dim,
                            model_dim,
                            vs,
                            name="compose"):
            # Just add the two embeddings!
            W = T.concatenate([T.eye(model_dim), T.eye(model_dim)], axis=0)
            i = T.concatenate([h_prev, inp], axis=1)
            return i.dot(W)

        X = T.imatrix("X")
        training_mode = T.scalar("training_mode")
        vs = VariableStore()
        embeddings = np.arange(vocab_size).reshape(
            (vocab_size, 1)).repeat(embedding_dim, axis=1)
        self.model = RNN(embedding_dim,
                         embedding_dim,
                         vocab_size,
                         seq_length,
                         compose_network,
                         IdentityLayer,
                         training_mode,
                         None,
                         vs,
                         X=X,
                         make_test_fn=True,
                         initial_embeddings=embeddings)
Пример #2
0
class RNNTestCase(unittest.TestCase):
    """Basic functional tests for RNN with dummy data."""
    def _make_rnn(self, seq_length=4):
        self.embedding_dim = embedding_dim = 3
        self.vocab_size = vocab_size = 10
        self.seq_length = seq_length

        def compose_network(h_prev,
                            inp,
                            embedding_dim,
                            model_dim,
                            vs,
                            name="compose"):
            # Just add the two embeddings!
            W = T.concatenate([T.eye(model_dim), T.eye(model_dim)], axis=0)
            i = T.concatenate([h_prev, inp], axis=1)
            return i.dot(W)

        X = T.imatrix("X")
        training_mode = T.scalar("training_mode")
        vs = VariableStore()
        embeddings = np.arange(vocab_size).reshape(
            (vocab_size, 1)).repeat(embedding_dim, axis=1)
        self.model = RNN(embedding_dim,
                         embedding_dim,
                         vocab_size,
                         seq_length,
                         compose_network,
                         IdentityLayer,
                         training_mode,
                         None,
                         vs,
                         X=X,
                         make_test_fn=True,
                         initial_embeddings=embeddings)

    def test_basic_ff(self):
        self._make_rnn(4)

        X = np.array([[3, 1, 2, 0], [3, 2, 4, 5]], dtype=np.int32)

        expected = np.array([[6, 6, 6], [14, 14, 14]])

        ret = self.model.scan_fn(X, 1.0)
        np.testing.assert_almost_equal(ret, expected)
Пример #3
0
    def _make_rnn(self, seq_length=4):
        self.embedding_dim = embedding_dim = 3
        self.vocab_size = vocab_size = 10
        self.seq_length = seq_length
        
        def compose_network(h_prev, inp, embedding_dim, model_dim, vs, name="compose"):
            # Just add the two embeddings!
            W = T.concatenate([T.eye(model_dim), T.eye(model_dim)], axis=0)
            i = T.concatenate([h_prev, inp], axis=1)
            return i.dot(W)

        X = T.imatrix("X")
        training_mode = T.scalar("training_mode")
        vs = VariableStore()
        embeddings = np.arange(vocab_size).reshape(
            (vocab_size, 1)).repeat(embedding_dim, axis=1)
        self.model = RNN(
            embedding_dim, embedding_dim, vocab_size, seq_length, compose_network,
            IdentityLayer, training_mode, None, vs,
            X=X, make_test_fn=True, initial_embeddings=embeddings)
Пример #4
0
class RNNTestCase(unittest.TestCase):

    """Basic functional tests for RNN with dummy data."""

    def _make_rnn(self, seq_length=4):
        self.embedding_dim = embedding_dim = 3
        self.vocab_size = vocab_size = 10
        self.seq_length = seq_length
        
        def compose_network(h_prev, inp, embedding_dim, model_dim, vs, name="compose"):
            # Just add the two embeddings!
            W = T.concatenate([T.eye(model_dim), T.eye(model_dim)], axis=0)
            i = T.concatenate([h_prev, inp], axis=1)
            return i.dot(W)

        X = T.imatrix("X")
        training_mode = T.scalar("training_mode")
        vs = VariableStore()
        embeddings = np.arange(vocab_size).reshape(
            (vocab_size, 1)).repeat(embedding_dim, axis=1)
        self.model = RNN(
            embedding_dim, embedding_dim, vocab_size, seq_length, compose_network,
            IdentityLayer, training_mode, None, vs,
            X=X, make_test_fn=True, initial_embeddings=embeddings)

    def test_basic_ff(self):
        self._make_rnn(4)

        X = np.array([
            [3, 1,  2, 0],
            [3, 2,  4, 5]
        ], dtype=np.int32)

        expected = np.array([[6, 6, 6],
                             [14, 14, 14]])

        ret = self.model.scan_fn(X, 1.0)
        np.testing.assert_almost_equal(ret, expected)