tf.contrib.layers.crossed_column(
columns,
hash_bucket_size,
combiner='sum',
ckpt_to_load_from=None,
tensor_name_in_ckpt=None,
hash_key=None
)
Defined in tensorflow/contrib/layers/python/layers/feature_column.py.
See the guide: Layers (contrib) > Feature columns
Creates a _CrossedColumn for performing feature crosses.
columns: An iterable of _FeatureColumn. Items can be an instance of _SparseColumn, _CrossedColumn, or _BucketizedColumn.hash_bucket_size: An int that is > 1. The number of buckets.combiner: A string specifying how to reduce if there are multiple entries in a single row. Currently "mean", "sqrtn" and "sum" are supported, with "sum" 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::tf.embedding_lookup_sparse.ckpt_to_load_from: (Optional). String representing checkpoint name/pattern to restore the column weights. Required if tensor_name_in_ckpt is not None.tensor_name_in_ckpt: (Optional). Name of the Tensor in the provided checkpoint from which to restore the column weights. Required if ckpt_to_load_from is not None.hash_key: Specify the hash_key that will be used by the FingerprintCat64 function to combine the crosses fingerprints on SparseFeatureCrossOp (optional).A _CrossedColumn.
TypeError: if any item in columns is not an instance of _SparseColumn, _CrossedColumn, or _BucketizedColumn, or hash_bucket_size is not an int.ValueError: if hash_bucket_size is not > 1 or len(columns) is not > 1.
© 2018 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/contrib/layers/crossed_column