From the TensorFlow docs it's clear how to use
tf.feature_column.categorical_column_with_vocabulary_list to create a feature column which takes as input some string and outputs a one-hot vector. For example
vocabulary_feature_column = tf.feature_column.categorical_column_with_vocabulary_list( key="vocab_feature", vocabulary_list=["kitchenware", "electronics", "sports"])
"kitchenware" maps to
"electronics" maps to
[0,1,0]. My question is related to having a list of strings as a feature. For example, if the feature value was
["kitchenware","electronics"] then the desired output would be
[1,1,0]. The input list length is not fixed but the output dimension is.
The use case is a straight bag-of-words type model (obviously with a much larger vocabulary list!).
What is the correct way to implement this?