1st Edition

Supervised Learning Mathematical Foundations and Real-world Applications

By Dalia Chakrabarty Copyright 2025
344 Pages 32 Color & 13 B/W Illustrations
by Chapman & Hall

344 Pages 32 Color & 13 B/W Illustrations
by Chapman & Hall

This book discusses the relevance of probabilistic supervised learning, to the pursuit of automated and reliable prediction of an unknown that is in a state of relationship with another variable. The book provides methods for secured mechanistic learning of the function that represents this relationship between the output and input variables, where said learning is undertaken within the remit of... Read more

Foreword   

Preface   

Acknowledgements   

1. Inter-variable relationships   

2. Bayesianism 

3. Supervised learning & prediction, using Gaussian Processes   

4. Covariance kernels suitable for real-world data   

5. Learning a high-dimensional function   

6. A self-assembled prior on correlation matrices   

Bibliography   

Index

Biography

Dr. Dalia Chakrabarty is a Reader in Statistical Data Science in the Department of Mathematics at the University of York. Her PhD is from St. Cross College in the University of Oxford, and she works on the development of methods to permit the probabilistic learning of random variables of various kinds, given real world data that is diversely challenging.