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Hands-On Python Natural Language Processing

You're reading from   Hands-On Python Natural Language Processing Explore tools and techniques to analyze and process text with a view to building real-world NLP applications

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Product type Paperback
Published in Jun 2020
Publisher Packt
ISBN-13 9781838989590
Length 316 pages
Edition 1st Edition
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Authors (2):
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Mayank Rasu Mayank Rasu
Author Profile Icon Mayank Rasu
Mayank Rasu
Aman Kedia Aman Kedia
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Aman Kedia
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Table of Contents (16) Chapters Close

Preface 1. Section 1: Introduction
2. Understanding the Basics of NLP FREE CHAPTER 3. NLP Using Python 4. Section 2: Natural Language Representation and Mathematics
5. Building Your NLP Vocabulary 6. Transforming Text into Data Structures 7. Word Embeddings and Distance Measurements for Text 8. Exploring Sentence-, Document-, and Character-Level Embeddings 9. Section 3: NLP and Learning
10. Identifying Patterns in Text Using Machine Learning 11. From Human Neurons to Artificial Neurons for Understanding Text 12. Applying Convolutions to Text 13. Capturing Temporal Relationships in Text 14. State of the Art in NLP 15. Other Books You May Enjoy

Summary

In this chapter, we began by extending our discussion on Word2Vec, applied a similar thought process to building document-level embedding, and discussed the Doc2Vec algorithm extensively. We followed that up by building word representations using character n-grams from the words themselves, a technique referred to as fastText. The fastText model helped us capture morphological information from sub-word representations. fastText is also flexible as it can provide embeddings for out-of-vocabulary words since embeddings are a result of sub-word representations. After that, we briefly discussed Sent2Vec, which combines the C-BOW and fastText approaches to building sentence-level representations. Finally, we introduced the Universal Sentence Encoder, which can also be used for fetching sentence-level embeddings and is based on complex deep learning architectures, all of which we will read about in the upcoming chapters.

In the next chapter, we will use whatever we have discussed so...

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