1
Your Cart
1
Your Cart

fully self-contained introduction to machine learning. All that the reader requires is an understanding of the basics of matrix algebra and calculus. Machine Learning: An Applied Mathematics Introduction covers the essential mathematics behind all of the most important techniques.

Chapter list:

  1. Introduction (Putting ML into context. Comparing and contrasting with classical mathematical and statistical modelling)
  2. General Matters (In one chapter all of the mathematical concepts you’ll need to know. From jargon and notation to maximum likelihood, from information theory and entropy to bias and variance, from cost functions to confusion matrices, and more)
  3. K Nearest Neighbours
  4. K Means Clustering
  5. Naïve Bayes Classifier
  6. Regression Methods
  7. Support Vector Machines
  8. Self-Organizing Maps
  9. Decision Trees
  10. Neural Networks
  11. Reinforcement Learning

An appendix contains links to data used in the book, and more.

The book includes many real-world examples from a variety of fields including

  • finance (volatility modelling)
  • economics (interest rates, inflation and GDP)
  • politics (classifying politicians according to their voting records, and using speeches to determine whether a politician is left or right wing)
  • biology (recognising flower varieties, and using heights and weights of adults to determine gender)
  • sociology (classifying locations according to crime statistics)
  • gambling (fruit machines and Blackjack)
  • business (classifying the members of his own website to see who will subscribe to his magazine)

Paul Wilmott brings three decades of experience in education, and his inimitable style, to this, the hottest of subjects. This book is an accessible introduction for anyone who wants to understand the foundations and put the tools into practice.

Paul Wilmott has been called “cult derivatives lecturer” by the Financial Times and “financial mathematics guru” by the BBC.

27 reviews for Machine Learning: An Applied Mathematics Introduction

There are no reviews yet.

Be the first to review “Machine Learning: An Applied Mathematics Introduction”
X

New item(s) have been added to your cart.

Frequently bought with How Not to Be Wrong: The Power of Mathematical Thinking


Linear Algebra Done Right (Undergraduate Texts in Mathematics) Original price was: $49.99.Current price is: $19.99.
View more
Towards Higher Mathematics: A Companion Original price was: $79.99.Current price is: $19.99.
View more
A Primer of Infinitesimal Analysis Original price was: $69.99.Current price is: $19.99.
View more
View more
McGraw-Hill Education Algebra I Review and Workbook Original price was: $29.99.Current price is: $14.99.
View more
A First Course in Differential Equations with Modeling Applications Original price was: $79.99.Current price is: $19.99.
View more
Geometry For Dummies Original price was: $19.99.Current price is: $14.99.
View more
The Principia: The Authoritative Translation and Guide: Mathematical Principles of Natural Philosophy Original price was: $79.99.Current price is: $19.99.
View more
Cart