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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 expanded on the ideas introduced in Chapter 4, Transforming Text into Data Structures. Instead of using the syntactical aspects of a document, we focused on capturing the semantics of words in a sentence. Properties such as the co-occurrence of words help in understanding the context of a word, and we tried to leverage this to build vector representations of text using the Word2vec algorithm. We explored the pretrained Word2vec model developed by Google and looked at a few relationships that it can capture. We followed this up by learning about the architecture of a Word2vec model. After that, we trained a few Word2vec models from scratch. Limitations and bias around the Word2Vec model were then discussed, followed by a discussion on some applications of the Word2vec model. Finally, we looked at how the WMD algorithm uses word vectors to capture document distances.

In the next chapter, we will take this idea further to build vectors for documents, sentences...

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