Creates a _SparseColumn with keys.
tf.contrib.layers.sparse_column_with_keys(
column_name, keys, default_value=-1, combiner='sum', dtype=tf.dtypes.string
)
Look up logic is as follows:
lookup_id = index_of_feature_in_keys if feature in keys else default_value
Args |
column_name
|
A string defining sparse column name.
|
keys
|
A list or tuple defining vocabulary. Must be castable to dtype .
|
default_value
|
The value to use for out-of-vocabulary feature values.
Default is -1.
|
combiner
|
A string specifying how to reduce if the sparse column is
multivalent. Currently "mean", "sqrtn" and "sum" are supported, with "sum"
the default. "sqrtn" often achieves good accuracy, in particular with
bag-of-words columns.
- "sum": do not normalize features in the column
- "mean": do l1 normalization on features in the column
- "sqrtn": do l2 normalization on features in the column
For more information:
tf.embedding_lookup_sparse .
|
dtype
|
Type of features. Only integer and string are supported.
|
Returns |
A _SparseColumnKeys with keys configuration.
|