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The Art Of Machine Learning: Algorithms+Data+R
Paperback

The Art Of Machine Learning: Algorithms+Data+R

$135.99
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Learn to expertly apply a range of machine learning methods to real data with this practical guide.

Machine learning without advanced math! This book presents a serious, practical look at machine learning, preparing you for valuable insights on your own data. The Art of Machine Learning is packed with real dataset examples and sophisticated advice on how to make full use of powerful machine learning methods. Readers will need only an intuitive grasp of charts, graphs, and the slope of a line, as well as familiarity with the R programming language.

You’ll become skilled in a range of machine learning methods, starting with the simple k-Nearest Neighbors method (k-NN), then on to random forests, gradient boosting, linear/logistic models, support vector machines, the LASSO, and neural networks. Final chapters introduce text and image classification, as well as time series. You’ll learn not only how to use machine learning methods, but also why these methods work, providing the strong foundational background you’ll need in practice.

Additional features-

. How to avoid common problems, such as dealing with dirty data and factor variables with large numbers of levels

. A look at typical misconceptions, such as dealing with unbalanced data

. Exploration of the famous Bias-Variance Tradeoff, central to machine learning, and how it plays out in practice for each machine learning method

. Dozens of illustrative examples involving real datasets of varying size and field of application

. Standard R packages are used throughout, with a simple wrapper interface to provide convenient access.

After finishing this book, you will be well equipped to start applying machine learning techniques to your own datasets.

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MORE INFO
Format
Paperback
Publisher
No Starch Press,US
Country
United States
Date
14 February 2023
Pages
250
ISBN
9781718502109

Learn to expertly apply a range of machine learning methods to real data with this practical guide.

Machine learning without advanced math! This book presents a serious, practical look at machine learning, preparing you for valuable insights on your own data. The Art of Machine Learning is packed with real dataset examples and sophisticated advice on how to make full use of powerful machine learning methods. Readers will need only an intuitive grasp of charts, graphs, and the slope of a line, as well as familiarity with the R programming language.

You’ll become skilled in a range of machine learning methods, starting with the simple k-Nearest Neighbors method (k-NN), then on to random forests, gradient boosting, linear/logistic models, support vector machines, the LASSO, and neural networks. Final chapters introduce text and image classification, as well as time series. You’ll learn not only how to use machine learning methods, but also why these methods work, providing the strong foundational background you’ll need in practice.

Additional features-

. How to avoid common problems, such as dealing with dirty data and factor variables with large numbers of levels

. A look at typical misconceptions, such as dealing with unbalanced data

. Exploration of the famous Bias-Variance Tradeoff, central to machine learning, and how it plays out in practice for each machine learning method

. Dozens of illustrative examples involving real datasets of varying size and field of application

. Standard R packages are used throughout, with a simple wrapper interface to provide convenient access.

After finishing this book, you will be well equipped to start applying machine learning techniques to your own datasets.

Read More
Format
Paperback
Publisher
No Starch Press,US
Country
United States
Date
14 February 2023
Pages
250
ISBN
9781718502109