indicator_column
encodes the input to a multi-hot
representation, not one-hot
encoding.
The example clarifies more:
name = indicator_column(categorical_column_with_vocabulary_list(
'name', ['bob', 'george', 'wanda'])
columns = [name, ...]
features = tf.parse_example(..., features=make_parse_example_spec(columns))
dense_tensor = input_layer(features, columns)
dense_tensor == [[1, 0, 0]] # If "name" bytes_list is ["bob"]
dense_tensor == [[1, 0, 1]] # If "name" bytes_list is ["bob", "wanda"]
dense_tensor == [[2, 0, 0]] # If "name" bytes_list is ["bob", "bob"]
The last two examples describe what is meant by multi-hot
encoding. for example if the input be ["bob", "wanda"]
the encoding will be [[1, 0, 1]]
.