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Machine Learning Techniques for Text

You're reading from   Machine Learning Techniques for Text Apply modern techniques with Python for text processing, dimensionality reduction, classification, and evaluation

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Product type Paperback
Published in Oct 2022
Publisher Packt
ISBN-13 9781803242385
Length 448 pages
Edition 1st Edition
Languages
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Author (1):
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Nikos Tsourakis Nikos Tsourakis
Author Profile Icon Nikos Tsourakis
Nikos Tsourakis
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Table of Contents (13) Chapters Close

Preface 1. Chapter 1: Introducing Machine Learning for Text 2. Chapter 2: Detecting Spam Emails FREE CHAPTER 3. Chapter 3: Classifying Topics of Newsgroup Posts 4. Chapter 4: Extracting Sentiments from Product Reviews 5. Chapter 5: Recommending Music Titles 6. Chapter 6: Teaching Machines to Translate 7. Chapter 7: Summarizing Wikipedia Articles 8. Chapter 8: Detecting Hateful and Offensive Language 9. Chapter 9: Generating Text in Chatbots 10. Chapter 10: Clustering Speech-to-Text Transcriptions 11. Index 12. Other Books You May Enjoy

Introducing boosting algorithms

The term boosting refers to a family of algorithms that use ensemble learning to build a collectively robust classifier from several weak classifiers. The difference with other ensemble techniques is that in boosting, we build a series of trees, where every other tree tries to fix the mistakes made by its predecessor. Contrast this approach with how the random forest classifier performs decisions presented in the Contracting a decision tree section of Chapter 3, Classifying Topics of Newsgroup Posts. In that case, multiple trees are constructed in parallel using the bagging technique. Another distinctive characteristic of boosting algorithms is their ability to deal with the bias-variance trade-off discussed in the Applying regularization section of Chapter 4, Extracting Sentiments from Product Reviews. Let’s present the major boosting algorithms in the following sections.

Understanding AdaBoost

Adaptive Boosting (AdaBoost) was the first...

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