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Class SequenceFeatures
A layer for sequence input.
Aliases:
- Class
tf.compat.v1.keras.experimental.SequenceFeatures
- Class
tf.compat.v2.keras.experimental.SequenceFeatures
All feature_columns
must be sequence dense columns with the same
sequence_length
. The output of this method can be fed into sequence
networks, such as RNN.
The output of this method is a 3D Tensor
of shape [batch_size, T, D]
.
T
is the maximum sequence length for this batch, which could differ from
batch to batch.
If multiple feature_columns
are given with Di
num_elements
each, their
outputs are concatenated. So, the final Tensor
has shape
[batch_size, T, D0 + D1 + ... + Dn]
.
Example:
rating = sequence_numeric_column('rating')
watches = sequence_categorical_column_with_identity(
'watches', num_buckets=1000)
watches_embedding = embedding_column(watches, dimension=10)
columns = [rating, watches_embedding]
sequence_input_layer = SequenceFeatures(columns)
features = tf.io.parse_example(...,
features=make_parse_example_spec(columns))
sequence_input, sequence_length = sequence_input_layer(features)
sequence_length_mask = tf.sequence_mask(sequence_length)
rnn_cell = tf.keras.layers.SimpleRNNCell(hidden_size)
rnn_layer = tf.keras.layers.RNN(rnn_cell)
outputs, state = rnn_layer(sequence_input, mask=sequence_length_mask)
__init__
__init__(
feature_columns,
trainable=True,
name=None,
**kwargs
)
"Constructs a SequenceFeatures layer.
Args:
feature_columns
: An iterable of dense sequence columns. Valid columns areembedding_column
that wraps asequence_categorical_column_with_*
sequence_numeric_column
.
trainable
: Boolean, whether the layer's variables will be updated via gradient descent during training.name
: Name to give to the SequenceFeatures.**kwargs
: Keyword arguments to construct a layer.
Raises:
ValueError
: If any of thefeature_columns
is not aSequenceDenseColumn
.