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Natural Language Processing Fundamentals

You're reading from   Natural Language Processing Fundamentals Build intelligent applications that can interpret the human language to deliver impactful results

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Product type Paperback
Published in Mar 2019
Publisher
ISBN-13 9781789954043
Length 374 pages
Edition 1st Edition
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Authors (2):
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Dwight Gunning Dwight Gunning
Author Profile Icon Dwight Gunning
Dwight Gunning
Sohom Ghosh Sohom Ghosh
Author Profile Icon Sohom Ghosh
Sohom Ghosh
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Toc

Table of Contents (10) Chapters Close

Preface 1. Introduction to Natural Language Processing FREE CHAPTER 2. Basic Feature Extraction Methods 3. Developing a Text classifier 4. Collecting Text Data from the Web 5. Topic Modeling 6. Text Summarization and Text Generation 7. Vector Representation 8. Sentiment Analysis Appendix

Topic Modeling Algorithms

Topic modeling algorithms operate on the following assumptions:

  • Topics contain a set of words
  • Documents are made up of a set of topics

Topics are not observed but are assumed to be hidden generators of words. After these assumptions, different algorithms diverge in how they go about discovering topics. In this chapter, we will cover two topic modeling algorithms, namely LSA and LDA. Both models will be discussed in detail in the coming sections.

Latent Semantic Analysis

We will start by looking at LSA. LSA actually predates the World Wide Web. It was first described in 1988. LSA is also known by an alternative acronym, Latent Semantic Indexing (LSI), particularly when it is used for semantic searches of document indexes. The goal of LSA is to uncover the latent topics that underlie documents and words. The assumption is that these latent topics drive the distribution of words in the document. In the next section, we will learn about...

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