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You're reading from  scikit-learn Cookbook - Second Edition

Product typeBook
Published inNov 2017
Reading LevelIntermediate
PublisherPackt
ISBN-139781787286382
Edition2nd Edition
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Author (1)
Trent Hauck
Trent Hauck
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Trent Hauck

Trent Hauck is a data scientist living and working in the Seattle area. He grew up in Wichita, Kansas and received his undergraduate and graduate degrees from the University of Kansas. He is the author of the book Instant Data Intensive Apps with pandas How-to, Packt Publishing—a book that can get you up to speed quickly with pandas and other associated technologies.
Read more about Trent Hauck

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Introduction

In this chapter, we will start by using a support vector machine (SVM) with a linear kernel to get a rough idea of how SVMs work. They create a hyperplane, or linear surface in several dimensions, which best separates the data.

In two dimensions, this is easy to see: the hyperplane is a line that separates the data. We will see the array of coefficients and intercept of the SVM. Together they uniquely describe a scikit-learn linear SVC predictor.

In the rest of the chapter, the SVMs have a radial basis function (RBF) kernel. They are nonlinear, but with smooth separating surfaces. In practice, SVMs work well with many datasets and thus are an integral part of the scikit-learn library.

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scikit-learn Cookbook - Second Edition
Published in: Nov 2017Publisher: PacktISBN-13: 9781787286382

Author (1)

author image
Trent Hauck

Trent Hauck is a data scientist living and working in the Seattle area. He grew up in Wichita, Kansas and received his undergraduate and graduate degrees from the University of Kansas. He is the author of the book Instant Data Intensive Apps with pandas How-to, Packt Publishing—a book that can get you up to speed quickly with pandas and other associated technologies.
Read more about Trent Hauck