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Machine Learning for the Web
book

Machine Learning for the Web

by Steve Essinger, Andrea Isoni
July 2016
Intermediate to advanced
298 pages
6h 14m
English
Packt Publishing
Content preview from Machine Learning for the Web

Chapter 3. Supervised Machine Learning

In this chapter, the most relevant regression and classification techniques are discussed. All of these algorithms share the same background procedure, and usually the name of the algorithm refers to both a classification and a regression method. The linear regression algorithms, Naive Bayes, decision tree, and support vector machine are going to be discussed in the following sections. To understand how to employ the techniques, a classification and a regression problem will be solved using the mentioned methods. Essentially, a labeled train dataset will be used to train the models, which means to find the values of the parameters, as we discussed in the introduction. As usual, the code is available in my ...

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Publisher Resources

ISBN: 9781785886607Supplemental Content