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tf.feature_column.weighted_categorical_column
Applies weight values to a CategoricalColumn.
tf.feature_column.weighted_categorical_column(
    categorical_column, weight_feature_key, dtype=tf.dtypes.float32
)
  Use this when each of your sparse inputs has both an ID and a value. For example, if you're representing text documents as a collection of word frequencies, you can provide 2 parallel sparse input features ('terms' and 'frequencies' below).
Example:
Input tf.Example objects:
[
  features {
    feature {
      key: "terms"
      value {bytes_list {value: "very" value: "model"} }
    }
    feature {
      key: "frequencies"
      value {float_list {value: 0.3 value: 0.1} }
    }
  },
  features {
    feature {
      key: "terms"
      value {bytes_list {value: "when" value: "course" value: "human"} }
    }
    feature {
      key: "frequencies"
      value {float_list {value: 0.4 value: 0.1 value: 0.2} }
    }
  }
]
  categorical_column = categorical_column_with_hash_bucket(
    column_name='terms', hash_bucket_size=1000)
weighted_column = weighted_categorical_column(
    categorical_column=categorical_column, weight_feature_key='frequencies')
columns = [weighted_column, ...]
features = tf.io.parse_example(..., features=make_parse_example_spec(columns))
linear_prediction, _, _ = linear_model(features, columns)
  This assumes the input dictionary contains a SparseTensor for key 'terms', and a SparseTensor for key 'frequencies'. These 2 tensors must have the same indices and dense shape.
| Args | |
|---|---|
categorical_column | 
      A CategoricalColumn created by categorical_column_with_* functions. | 
     
weight_feature_key | 
      String key for weight values. | 
dtype | 
      Type of weights, such as tf.float32. Only float and integer weights are supported. | 
     
| Returns | |
|---|---|
A CategoricalColumn composed of two sparse features: one represents id, the other represents weight (value) of the id feature in that example. | 
     
| Raises | |
|---|---|
ValueError | 
      if dtype is not convertible to float. | 
     
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Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
 https://www.tensorflow.org/versions/r2.3/api_docs/python/tf/feature_column/weighted_categorical_column