Applied Machine Learning

Title: Applied Machine Learning
Author: M. Gopal
ISBN: 1260456846 / 9781260456844
Format: Hard Cover
Pages: 656
Publisher: McGraw-Hill
Year: 2019
Availability: 45-60 days

Tab Article

Cutting-edge machine learning principles, practices, and applications

This comprehensive textbook explores the theoretical under¬pinnings of learning and equips readers with the knowledge needed to apply powerful machine learning techniques to solve challenging real-world problems. Applied Machine Learning shows, step by step, how to conceptualize problems, accurately represent data, select and tune algorithms, interpret and analyze results, and make informed strategic decisions. Presented in a non-rigorous mathematical style, the book covers a broad array of machine learning topics with special emphasis on methods that have been profitably employed.

Coverage includes:

  • Supervised learning
  • Statistical learning
  • Learning with support vector machines (SVM)
  • Learning with neural networks (NN)
  • Fuzzy inference systems
  • Data clustering
  • Data transformations
  • Decision tree learning
  • Business intelligence
  • Data mining
  • And much more

Tab Article

Dedication
Contents
Preface
Acknowledgements

Chapter 1 : Introduction
Chapter 2 : Supervised Learning: Rationale and Basics
Chapter 3 : Statistical Learning
Chapter 4 : Learning With Support Vector Machines (SVM)
Chapter 5 : Learning With Neural Networks (NN)
Chapter 6 : Fuzzy Inference Systems
Chapter 7 : Data Clustering and Data Transformations
Chapter 8 : Decision Tree Learning
Chapter 9 : Business Intelligence and Data Mining : Techniques and Applications

Appendix A Genetic Algorithm (GA) For Search Optimization
Appendix B Reinforcement Learning (RL)
Index