Embedding RNN sequence-to-sequence model.
tf.contrib.legacy_seq2seq.embedding_rnn_seq2seq(
encoder_inputs, decoder_inputs, cell, num_encoder_symbols, num_decoder_symbols,
embedding_size, output_projection=None, feed_previous=False, dtype=None,
scope=None
)
This model first embeds encoder_inputs by a newly created embedding (of shape
[num_encoder_symbols x input_size]). Then it runs an RNN to encode
embedded encoder_inputs into a state vector. Next, it embeds decoder_inputs
by another newly created embedding (of shape [num_decoder_symbols x
input_size]). Then it runs RNN decoder, initialized with the last
encoder state, on embedded decoder_inputs.
Args |
encoder_inputs
|
A list of 1D int32 Tensors of shape [batch_size].
|
decoder_inputs
|
A list of 1D int32 Tensors of shape [batch_size].
|
cell
|
tf.compat.v1.nn.rnn_cell.RNNCell defining the cell function and size.
|
num_encoder_symbols
|
Integer; number of symbols on the encoder side.
|
num_decoder_symbols
|
Integer; number of symbols on the decoder side.
|
embedding_size
|
Integer, the length of the embedding vector for each symbol.
|
output_projection
|
None or a pair (W, B) of output projection weights and
biases; W has shape [output_size x num_decoder_symbols] and B has shape
[num_decoder_symbols]; if provided and feed_previous=True, each fed
previous output will first be multiplied by W and added B.
|
feed_previous
|
Boolean or scalar Boolean Tensor; if True, only the first of
decoder_inputs will be used (the "GO" symbol), and all other decoder
inputs will be taken from previous outputs (as in embedding_rnn_decoder).
If False, decoder_inputs are used as given (the standard decoder case).
|
dtype
|
The dtype of the initial state for both the encoder and encoder
rnn cells (default: tf.float32).
|
scope
|
VariableScope for the created subgraph; defaults to
"embedding_rnn_seq2seq"
|
Returns |
A tuple of the form (outputs, state), where:
outputs: A list of the same length as decoder_inputs of 2D Tensors. The
output is of shape [batch_size x cell.output_size] when
output_projection is not None (and represents the dense representation
of predicted tokens). It is of shape [batch_size x num_decoder_symbols]
when output_projection is None.
state: The state of each decoder cell in each time-step. This is a list
with length len(decoder_inputs) -- one item for each time-step.
It is a 2D Tensor of shape [batch_size x cell.state_size].
|