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Advanced Natural Language Processing with TensorFlow 2

You're reading from   Advanced Natural Language Processing with TensorFlow 2 Build effective real-world NLP applications using NER, RNNs, seq2seq models, Transformers, and more

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Product type Paperback
Published in Feb 2021
Publisher Packt
ISBN-13 9781800200937
Length 380 pages
Edition 1st Edition
Languages
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Authors (2):
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Tony Mullen Tony Mullen
Author Profile Icon Tony Mullen
Tony Mullen
Ashish Bansal Ashish Bansal
Author Profile Icon Ashish Bansal
Ashish Bansal
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Toc

Table of Contents (13) Chapters Close

Preface 1. Essentials of NLP 2. Understanding Sentiment in Natural Language with BiLSTMs FREE CHAPTER 3. Named Entity Recognition (NER) with BiLSTMs, CRFs, and Viterbi Decoding 4. Transfer Learning with BERT 5. Generating Text with RNNs and GPT-2 6. Text Summarization with Seq2seq Attention and Transformer Networks 7. Multi-Modal Networks and Image Captioning with ResNets and Transformer Networks 8. Weakly Supervised Learning for Classification with Snorkel 9. Building Conversational AI Applications with Deep Learning 10. Installation and Setup Instructions for Code 11. Other Books You May Enjoy
12. Index

Seq2seq model with attention

The summarization model has an Encoder part with a bidirectional RNN and a unidirectional decoder part. There is an attention layer that helps the Decoder focus on specific parts of the input while generating an output token. The overall architecture is shown in the following diagram:

Figure 6.1: Seq2seq and attention model

These layers are detailed in the following subsections. All the code for these parts of the model are in the file seq2seq.py. All the layers use common hyperparameters specified in the main function in the s2s-training.py file:

embedding_dim = 128
units = 256  # from pointer generator paper

The code and architecture for this section have been inspired by the paper titled Get To The Point: Summarization with Pointer-Generator Networks by Abigail See, Peter Liu, and Chris Manning, published in April 2017. The fundamental architecture is easy to follow and provides impressive performance for a model that can be trained...

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