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Natural Language Processing with TensorFlow

You're reading from  Natural Language Processing with TensorFlow

Product type Book
Published in May 2018
Publisher Packt
ISBN-13 9781788478311
Pages 472 pages
Edition 1st Edition
Languages
Authors (2):
Motaz Saad Motaz Saad
Thushan Ganegedara Thushan Ganegedara
Profile icon Thushan Ganegedara
View More author details

Table of Contents (16) Chapters

Natural Language Processing with TensorFlow
Contributors
Preface
1. Introduction to Natural Language Processing 2. Understanding TensorFlow 3. Word2vec – Learning Word Embeddings 4. Advanced Word2vec 5. Sentence Classification with Convolutional Neural Networks 6. Recurrent Neural Networks 7. Long Short-Term Memory Networks 8. Applications of LSTM – Generating Text 9. Applications of LSTM – Image Caption Generation 10. Sequence-to-Sequence Learning – Neural Machine Translation 11. Current Trends and the Future of Natural Language Processing Mathematical Foundations and Advanced TensorFlow Index

Defining the LSTM


Now that we have defined the data generator to output a batch of data, starting with a batch of image feature vectors followed by the caption for the respective images word by word, we will define the LSTM cell. The definition of the LSTM and the training procedure is similar to what we observed in the previous chapter.

We will first define the parameters of the LSTM cell. Two sets of weights and a bias for input gate, forget gate, output gate, and for calculating the candidate value:

# Input gate (i_t) - How much memory to write to cell state
# Connects the current input to the input gate
ix = tf.Variable(tf.truncated_normal([embedding_size, num_nodes], stddev=0.01))
# Connects the previous hidden state to the input gate
im = tf.Variable(tf.truncated_normal([num_nodes, num_nodes], stddev=0.01))
# Bias of the input gate
ib = tf.Variable(tf.random_uniform([1, num_nodes],0.0, 0.01))

# Forget gate (f_t) - How much memory to discard from cell state
# Connects the current input...
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