Skip to Main Content (Press Enter)
The Art of Machine Learning by Norman Matloff
Add The Art of Machine Learning to bookshelf
Add to Bookshelf

The Art of Machine Learning

Best Seller
The Art of Machine Learning by Norman Matloff
Paperback $49.99
Jan 09, 2024 | ISBN 9781718502109

Buy from Other Retailers:

See All Formats (1) +
  • $49.99

    Jan 09, 2024 | ISBN 9781718502109

    Buy from Other Retailers:

  • Jan 09, 2024 | ISBN 9781718502116

    Buy from Other Retailers:

Product Details

Praise

“In contrast to other books about machine learning, there is a bigger emphasis on programming and usage in practice. In particular, there is an excellent explanation of how to avoid over/under-fitting, and how to use cross-validation. This book is sure to be helpful for students who are interested to understand the core concepts, as well as their practical implementations in R.”
—Toby Dylan Hocking, Assistant Professor, Northern Arizona University

The Art of Machine Learning by Norman Matloff is a welcome addition to a growing body of books about machine learning. Matloff, whose career spans both computer science and statistics, addresses the new and exciting field with a fresh approach.”
—Dirk Eddelbuettel, Department of Statistics, University of Illinois

Table Of Contents

Acknowledgments
Introduction

PART I: PROLOGUE, AND NEIGHBORHOOD-BASED METHODS
Chapter 1: Regression Models
Chapter 2: Classification Models
Chapter 3: Bias, Variance, Overfitting, and Cross-Validation
Chapter 4: Dealing with Large Numbers of Features
PART II: TREE-BASED METHODS
Chapter 5: A Step Beyond k-NN: Decision Trees
Chapter 6: Tweaking the Trees
Chapter 7: Finding a Good Set of Hyperparameters
PART III: METHODS BASED ON LINEAR RELATIONSHIPS
Chapter 8: Parametric Methods
Chapter 9: Cutting Things Down to Size: Regularization
PART IV: METHODS BASED ON SEPARATING LINES AND PLANES
Chapter 10: A Boundary Approach: Support Vector Machines
Chapter 11: Linear Models on Steroids: Neural Networks
PART V: APPLICATIONS
Chapter 12: Image Classification 
Chapter 13: Handling Time Series and Text Data 
Appendix A: List of Acronyms and Symbols 
Appendix B: Statistics and ML Terminology Correspondence
Appendix C: Matrices, Data Frames, and Factor Conversions
Appendix D: Pitfall: Beware of “p-Hacking”!

Looking for More Great Reads?
21 Books You’ve Been Meaning to Read
Back to Top