I'm working on a seq2seq RNN generating an output sequence of labels given a seed label. During the inference step I'd like to generate sequences containing only unique labels (i.e. skip labels that have already been added to the output sequence). To do this I created a sampler object that tries to remember the labels that have been added to the output and reduce their logit value to -np.inf
.
Here is the sampler code:
class InferenceSampler(object):
def __init__(self, out_weights, out_biases):
self._out_weights = tf.transpose(out_weights)
self._out_biases = out_biases
self._n_tracks = out_weights.shape[0]
self.ids_mask = tf.zeros([self._n_tracks], name="playlist_mask")
def __call__(self, decoder_outputs):
_logits = tf.matmul(decoder_outputs, self._out_weights)
_logits = tf.nn.bias_add(_logits, self._out_biases)
# apply mask
_logits = _logits + self.ids_mask
_sample_ids = tf.cast(tf.argmax(_logits, axis=-1), tf.int32)
# update mask
step_ids_mask = tf.sparse_to_dense(_sample_ids, [self._n_tracks], -np.inf)
self.ids_mask = self.ids_mask + step_ids_mask
return _sample_ids
The code of the inference graph looks like this:
self._max_playlist_len = tf.placeholder(tf.int32, ())
self._start_tokens = tf.placeholder(tf.int32, [None])
sample_fn = InferenceSampler(out_weights, out_biases)
with tf.name_scope("inf_decoder"):
def _end_fn(sample_ids):
return tf.equal(sample_ids, PAD_ITEM_ID)
def _next_inputs_fn(sample_ids):
return tf.nn.embedding_lookup(
track_embs,
sample_ids
)
_start_inputs = tf.nn.embedding_lookup(
track_embs,
self._start_tokens
)
helper = tf.contrib.seq2seq.InferenceHelper(
sample_fn=sample_fn,
sample_shape=[],
sample_dtype=tf.int32,
start_inputs=_start_inputs,
end_fn=_end_fn,
next_inputs_fn=_next_inputs_fn
)
decoder = tf.contrib.seq2seq.BasicDecoder(
rnn_cell,
helper,
rnn_cell.zero_state(tf.shape(self._start_tokens)[0], tf.float32),
output_layer=projection_layer
)
outputs, _, _ = tf.contrib.seq2seq.dynamic_decode(
decoder,
maximum_iterations=self._max_playlist_len
)
self.playlists = outputs.sample_id
Unfortunately, the results still have duplicated labels. Moreover, when I try to get access to the sample_fn.ids_mask
I receive an error message: ValueError: Operation 'inf_decoder/decoder/while/BasicDecoderStep/add_1' has been marked as not fetchable.
What am I doing wrong? And how legal is to create such sample_fn
?