I am trying to learn how to build RNN for Speech Recognition using TensorFlow. As a start, I wanted to try out some example models put up on TensorFlow page TF-RNN
As per what was advised, I had taken some time to understand how word IDs are embedded into a dense representation (Vector Representation) by working through the basic version of word2vec model code. I had an understanding of what
tf.nn.embedding_lookup actually does, until I actually encountered the same function being used with two dimensional array in TF-RNN
ptb_word_lm.py, when it did not make sense any more.
what I though
Given a 2-d array
params, and a 1-d array
tf.nn.embedding_lookup fetches rows from params, corresponding to the indices given in
ids, which holds with the dimension of output it is returning.
What I am confused about:
When tried with same params, and 2-d array
tf.nn.embedding_lookup returns 3-d array, instead of 2-d which I do not understand why.
I looked up the manual for Embedding Lookup, but I still find it difficult to understand how the partitioning works, and the result that is returned. I recently tried some simple example with
tf.nn.embedding_lookup and it appears that it returns different values each time. Is this behaviour due to the randomness involved in partitioning ?
Please help me understand how
tf.nn.embedding_lookup works, and why is used in both
ptb_word_lm.py i.e., what is the purpose of even using them ?