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Machine Learning with scikit-learn Quick Start Guide

You're reading from   Machine Learning with scikit-learn Quick Start Guide Classification, regression, and clustering techniques in Python

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Product type Paperback
Published in Oct 2018
Publisher Packt
ISBN-13 9781789343700
Length 172 pages
Edition 1st Edition
Languages
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Author (1):
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Kevin Jolly Kevin Jolly
Author Profile Icon Kevin Jolly
Kevin Jolly
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Table of Contents (10) Chapters Close

Preface 1. Introducing Machine Learning with scikit-learn 2. Predicting Categories with K-Nearest Neighbors FREE CHAPTER 3. Predicting Categories with Logistic Regression 4. Predicting Categories with Naive Bayes and SVMs 5. Predicting Numeric Outcomes with Linear Regression 6. Classification and Regression with Trees 7. Clustering Data with Unsupervised Machine Learning 8. Performance Evaluation Methods 9. Other Books You May Enjoy

What this book covers

Chapter 1, Introducing Machine Learning with scikit-learn, is a brief introduction to the different types of machine learning and its applications.

Chapter 2, Predicting Categories with K-Nearest Neighbors, covers working with and implementing the k-nearest neighbors algorithm to solve classification problems in scikit-learn.

Chapter 3, Predicting Categories with Logistic Regression, explains the workings and implementation of the logistic regression algorithm when solving classification problems in scikit-learn.

Chapter 4, Predicting Categories with Naive Bayes and SVMs, explains the workings and implementation of the Naive Bayes and the Linear Support Vector Machines algorithms when solving classification problems in scikit-learn.

Chapter 5, Predicting Numeric Outcomes with Linear Regression, explains the workings and implementation of the linear regression algorithm when solving regression problems in scikit-learn.

Chapter 6, Classification and Regression with Trees, explains the workings and implementation of tree-based algorithms such as decision trees, random forests, and the boosting and ensemble algorithms when solving classification and regression problems in scikit-learn.

Chapter 7, Clustering Data with Unsupervised Machine Learning, explains the workings and implementation of the k-means algorithm when solving unsupervised problems in scikit-learn.

Chapter 8, Performance Evaluation Methods, contains visual performance evaluation techniques for supervised and unsupervised machine learning algorithms.

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