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Data Science  with Python

You're reading from   Data Science with Python Combine Python with machine learning principles to discover hidden patterns in raw data

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Product type Paperback
Published in Jul 2019
Publisher Packt
ISBN-13 9781838552862
Length 426 pages
Edition 1st Edition
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Authors (3):
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Rohan Chopra Rohan Chopra
Author Profile Icon Rohan Chopra
Rohan Chopra
Mohamed Noordeen Alaudeen Mohamed Noordeen Alaudeen
Author Profile Icon Mohamed Noordeen Alaudeen
Mohamed Noordeen Alaudeen
Aaron England Aaron England
Author Profile Icon Aaron England
Aaron England
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Toc

Table of Contents (10) Chapters Close

About the Book 1. Introduction to Data Science and Data Pre-Processing FREE CHAPTER 2. Data Visualization 3. Introduction to Machine Learning via Scikit-Learn 4. Dimensionality Reduction and Unsupervised Learning 5. Mastering Structured Data 6. Decoding Images 7. Processing Human Language 8. Tips and Tricks of the Trade 1. Appendix

Max Margin Classification Using SVMs

SVM is an algorithm for supervised learning that solves both classification and regression problems. However, SVM is most commonly used in classification problems, so, for the purposes of this chapter, we will focus on SVM as a binary classifier. The goal of SVM is to determine the best location of a hyperplane that create a class boundary between data points plotted on a multidimensional space. To help clarify this concept, refer to Figure 3.20.

Figure 3.20: Hyperplane (blue) separating the circles from the squares in three dimensions

In Figure 3.20, the squares and circles are observations in the same DataFrame that represent different classes. In this figure, the hyperplane is depicted by a semi-transparent blue boundary lying between the circles and squares that separate the observations into two distinct classes. In this example, the observations are said to be linearly separable.

The location of the hyperplane is determined by finding...

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