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Machine Learning with scikit-learn Quick Start Guide

You're reading from  Machine Learning with scikit-learn Quick Start Guide

Product type Book
Published in Oct 2018
Publisher Packt
ISBN-13 9781789343700
Pages 172 pages
Edition 1st Edition
Languages
Author (1):
Kevin Jolly Kevin Jolly
Profile icon Kevin Jolly
Toc

Table of Contents (10) Chapters close

Preface 1. Introducing Machine Learning with scikit-learn 2. Predicting Categories with K-Nearest Neighbors 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

Algorithms that you will learn to implement using scikit-learn

The algorithms that you will learn about in this book are broadly classified into the following two categories:

  • Supervised learning algorithms
  • Unsupervised learning algorithms

Supervised learning algorithms

Supervised learning algorithms can be used to solve both classification and regression problems. In this book, you will learn how to implement some of the most popular supervised machine learning algorithms. Popular supervised machine learning algorithms are the ones that are widely used in industry and research, and have helped us solve a wide range of problems across a wide range of domains. These supervised learning algorithms are as follows:

  • Linear regression: This supervised learning algorithm is used to predict continuous numeric outcomes such as house prices, stock prices, and temperature, to name a few
  • Logistic regression: The logistic learning algorithm is a popular classification algorithm that is especially used in the credit industry in order to predict loan defaults
  • k-Nearest Neighbors: The k-NN algorithm is a classification algorithm that is used to classify data into two or more categories, and is widely used to classify houses into expensive and affordable categories based on price, area, bedrooms, and a whole range of other features
  • Support vector machines: The SVM algorithm is a popular classification algorithm that is used in image and face detection, along with applications such as handwriting recognition
  • Tree-Based algorithms: Tree-based algorithms such as decision trees, Random Forests, and Boosted trees are used to solve both classification and regression problems
  • Naive Bayes: The Naive Bayes classifier is a machine learning algorithm that uses the mathematical model of probability to solve classification problems

Unsupervised learning algorithms

Unsupervised machine learning algorithms are typically used to cluster points of data based on distance. The unsupervised learning algorithm that you will learn about in this book is as follows:

  • k-means: The k-means algorithm is a popular algorithm that is typically used to segment customers into unique categories based on a variety of features, such as their spending habits. This algorithm is also used to segment houses into categories based on their features, such as price and area.

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Machine Learning with scikit-learn Quick Start Guide
Published in: Oct 2018 Publisher: Packt ISBN-13: 9781789343700
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