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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 the K-means algorithm

The K-means algorithm is a predominant unsupervised learning algorithm for clustering data due to its simplicity and efficiency. It aims to group similar items in the form of K clusters. After selecting K random centroids, it repeatedly moves them around to group the most similar samples to the center of each cluster. As a similarity measure, we can use metrics such as the Euclidean distance, cosine similarity (check the Calculating vector similarity section in Chapter 2, Detecting Spam Emails), Pearson correlation coefficients (discussed in the Understanding the Pearson correlation section of Chapter 5, Recommending Music Titles), and so forth. An example can help us to understand the algorithm better. Suppose that you are given the dataset shown in the upper-left plot of Figure 10.3:

Figure 10.3 – K-means basic steps

It’s straightforward to identify that the data points can be grouped into three clusters. Unfortunately...

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