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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

Summary

Summarizing text is considered a uniquely human trait. Deep learning NLP models have made great strides in this area in the past 2-3 years. Summarization remains a very hot area of research within many applications. In this chapter, we built a seq2seq model from scratch that can summarize sentences from news articles and generate a headline. This model obtains fairly good results due to its simplicity. We were able to train the model for a long period of time due to learning rate annealing. By checkpointing the model, training was made resilient as it could be restarted from the last checkpoint in case of failure. Post-training, we improved our generated summaries through a custom implementation of beam search. As beam search has a tendency to provide short summaries, length normalization techniques were used to make the summaries even better.

Measuring the quality of generated summaries is a challenge in abstractive summarization. Here is a random example from the...

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