Computing Reviews

Algorithmic aspects of machine learning
Moitra A., Cambridge University Press,New York, NY,2018. 158 pp.Type:Book
Date Reviewed: 01/31/20

This book aims to provide readers with an algorithmic toolkit for machine learning (ML) problems. Chapter 1 explains why analyzing ML algorithms is so challenging. The remaining seven chapters present algorithms to solve some specific ML problems.

Chapter 2 discusses nonnegative matrix factorization (NMF). NMF is useful in many applications, including computer vision, audio signal processing, and recommendation systems. The author proposes provable algorithms by making some domain-specific assumptions called “separability.”

Chapter 3 covers tensor decomposition, including the use of Jennrich’s algorithm for computing a minimum rank decomposition. Chapter 4 enriches the previous one with applications such as phylogenetic trees and community detection.

Chapter 5 addresses sparsity using, for example, pursuit algorithms and Prony’s method. Chapter 6 covers sparse coding. Chapter 7 presents algorithms for learning the parameters of a Gaussian mixture. Finally, chapter 8 studies the matrix completion problem.

The book is very technical, and familiarity with mathematics is important. The content is very concise, and each chapter ends with a set of practice exercises. Overall, this book is definitely not a tutorial for beginners, but rather a good reference for readers already familiar with ML concepts and applications.

Reviewer:  Ghita Kouadri Review #: CR146865 (2007-0153)

Reproduction in whole or in part without permission is prohibited.   Copyright 2024 ComputingReviews.com™
Terms of Use
| Privacy Policy