MATLAB Machine Learning Recipes: A Problem-Solution Approach, Second Edition

  • 4h 18m
  • Michael Paluszek, Stephanie Thomas
  • Apress
  • 2019

Harness the power of MATLAB to resolve a wide range of machine learning challenges. This book provides a series of examples of technologies critical to machine learning. Each example solves a real-world problem.

All code in MATLAB Machine Learning Recipes: A Problem-Solution Approach is executable. The toolbox that the code uses provides a complete set of functions needed to implement all aspects of machine learning. Authors Michael Paluszek and Stephanie Thomas show how all of these technologies allow the reader to build sophisticated applications to solve problems with pattern recognition, autonomous driving, expert systems, and much more.

What you'll learn:

  • How to write code for machine learning, adaptive control and estimation using MATLAB
  • How these three areas complement each other
  • How these three areas are needed for robust machine learning applications
  • How to use MATLAB graphics and visualization tools for machine learning
  • How to code real world examples in MATLAB for major applications of machine learning in big data

Who is this book for:

The primary audiences are engineers, data scientists and students wanting a comprehensive and code cookbook rich in examples on machine learning using MATLAB.

In this Book

  • An Overview of Machine Learning
  • Representation of Data for Machine Learning in MATLAB
  • MATLAB Graphics
  • Kalman Filters
  • Adaptive Control
  • Fuzzy Logic
  • Data Classification with Decision Trees
  • Introduction to Neural Nets
  • Classification of Numbers Using Neural Networks
  • Pattern Recognition with Deep Learning
  • Neural Aircraft Control
  • Multiple Hypothesis Testing
  • Autonomous Driving with Multiple Hypothesis Testing
  • Case-Based Expert Systems