embedding_column(
categorical_column,
dimension,
combiner='mean',
initializer=None,
ckpt_to_load_from=None,
tensor_name_in_ckpt=None,
max_norm=None,
trainable=True
)
Defined in tensorflow/python/feature_column/feature_column.py.
_DenseColumn that converts from sparse, categorical input.
Use this when your inputs are sparse, but you want to convert them to a dense representation (e.g., to feed to a DNN).
Inputs must be a _CategoricalColumn created by any of the categorical_column_* function. Here is an example embedding of an identity column for a DNN model:
video_id = categorical_column_with_identity(
key='video_id', num_buckets=1000000, default_value=0)
columns = [embedding_column(video_id, 9),...]
features = tf.parse_example(..., features=make_parse_example_spec(columns))
dense_tensor = input_layer(features, columns)
categorical_column: A _CategoricalColumn created by a categorical_column_with_* function. This column produces the sparse IDs that are inputs to the embedding lookup.dimension: An integer specifying dimension of the embedding, must be > 0.combiner: A string specifying how to reduce if there are multiple entries in a single row. Currently 'mean', 'sqrtn' and 'sum' are supported, with 'mean' the default. 'sqrtn' often achieves good accuracy, in particular with bag-of-words columns. Each of this can be thought as example level normalizations on the column. For more information, see tf.embedding_lookup_sparse.initializer: A variable initializer function to be used in embedding variable initialization. If not specified, defaults to tf.truncated_normal_initializer with mean 0.0 and standard deviation 1/sqrt(dimension).ckpt_to_load_from: String representing checkpoint name/pattern from which to restore column weights. Required if tensor_name_in_ckpt is not None.tensor_name_in_ckpt: Name of the Tensor in ckpt_to_load_from from which to restore the column weights. Required if ckpt_to_load_from is not None.max_norm: If not None, embedding values are l2-normalized to this value.trainable: Whether or not the embedding is trainable. Default is True._DenseColumn that converts from sparse input.
ValueError: if dimension not > 0.ValueError: if exactly one of ckpt_to_load_from and tensor_name_in_ckpt is specified.ValueError: if initializer is specified and is not callable.
© 2017 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/feature_column/embedding_column