A sequence of categorical terms where ids are set by hashing. (deprecated)
tf . feature_column . sequence_categorical_column_with_hash_bucket (
key ,
hash_bucket_size ,
dtype = tf . dtypes . string
)
Deprecated: THIS FUNCTION IS DEPRECATED. It will be removed in a future version.
Instructions for updating:
Use Keras preprocessing layers instead, either directly or via the tf.keras.utils.FeatureSpace
utility. Each of tf.feature_column.*
has a functional equivalent in tf.keras.layers
for feature preprocessing when training a Keras model.
Pass this to embedding_column
or indicator_column
to convert sequence
categorical data into dense representation for input to sequence NN, such as
RNN.
Example:
tokens = sequence_categorical_column_with_hash_bucket (
'tokens' , hash_bucket_size = 1000 )
tokens_embedding = embedding_column ( tokens , dimension = 10 )
columns = [ tokens_embedding ]
features = tf . io . parse_example ( ... , features = make_parse_example_spec ( columns ))
sequence_feature_layer = SequenceFeatures ( columns )
sequence_input , sequence_length = sequence_feature_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 )
Args
key
A unique string identifying the input feature.
hash_bucket_size
An int > 1. The number of buckets.
dtype
The type of features. Only string and integer types are supported.
Returns
A SequenceCategoricalColumn
.
Raises
ValueError
hash_bucket_size
is not greater than 1.
ValueError
dtype
is neither string nor integer.