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Hands-on Machine Learning with JavaScript

You're reading from   Hands-on Machine Learning with JavaScript Solve complex computational web problems using machine learning

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Product type Paperback
Published in May 2018
Publisher Packt
ISBN-13 9781788998246
Length 356 pages
Edition 1st Edition
Languages
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Author (1):
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Burak Kanber Burak Kanber
Author Profile Icon Burak Kanber
Burak Kanber
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Table of Contents (14) Chapters Close

Preface 1. Exploring the Potential of JavaScript FREE CHAPTER 2. Data Exploration 3. Tour of Machine Learning Algorithms 4. Grouping with Clustering Algorithms 5. Classification Algorithms 6. Association Rule Algorithms 7. Forecasting with Regression Algorithms 8. Artificial Neural Network Algorithms 9. Deep Neural Networks 10. Natural Language Processing in Practice 11. Using Machine Learning in Real-Time Applications 12. Choosing the Best Algorithm for Your Application 13. Other Books You May Enjoy

Grouping with Clustering Algorithms

A common and introductory unsupervised learning problem is that of clustering. Often, you have large datasets that you wish to organize into smaller groups, or wish to break up into logically similar groups. For instance, you can try to divide census data of household incomes into three groups: low, high, and super rich. If you feed the household income data into a clustering algorithm, you would expect to see three data points as a result, with each corresponding to the average value of your three categories. Even this one-dimensional problem of clustering household incomes may be difficult to do by hand, because you might not know where one group should end and the other should begin. You could use governmental definitions of income brackets, but there's no guarantee that those brackets are geometrically balanced; they were invented by...

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