I am building an LSTM Model using word2vec as an input. I am using the tensorflow framework. I have finished word embedding part, but I am stuck with LSTM part.
The issue here is that I have different sentence lengths, which means that I have to either do padding or use dynamic_rnn with specified sequence length. I am struggling with both of them.
Padding. The confusing part of padding is when I do padding. My model goes like
X = tf.placeholder(tf.int32, shape)
data = tf.placeholder(tf.float32, shape)
data = tf.nn.embedding_lookup(word_matrix, X)
Then, I am feeding sequences of word indices for word_matrix into X. I am worried that if I pad zero's to the sequences fed into X, then I would incorrectly keep feeding unnecessary input (word_matrix in this case).
So, I am wondering what is the correct way of 0 padding. It would be great if you let me know how to implement it with tensorflow.
- dynamic_rnn For this, I have declared a list containing all the lengths of sentences and feed those along with X and y at the end. In this case, I cannot feed the inputs as batch though. Then, I have encountered this error (ValueError: as_list() is not defined on an unknown TensorShape.), which seems to me that sequence_length argument only accepts list? (My thoughts might be entirely incorrect though).
The following is my code for this.
X = tf.placeholder(tf.int32) labels = tf.placeholder(tf.int32, [None, numClasses]) length = tf.placeholder(tf.int32) data = tf.placeholder(tf.float32, [None, None, numDimensions]) data = tf.nn.embedding_lookup(word_matrix, X) lstmCell = tf.contrib.rnn.BasicLSTMCell(lstmUnits, state_is_tuple=True) lstmCell = tf.contrib.rnn.DropoutWrapper(cell=lstmCell, output_keep_prob=0.25) initial_state=lstmCell.zero_state(batchSize, tf.float32) value, _ = tf.nn.dynamic_rnn(lstmCell, data, sequence_length=length, initial_state=initial_state, dtype=tf.float32)
I am so struggling with this part so that any help would be very much appreciated.
Thank you in advance.