Description
A practical introduction perfect for final-year undergraduate and graduate students without a solid background in linear algebra and calculus.
About the Author
David Barber is Reader in Information Processing in the Department of Computer Science, University College London.
Reviews
'This book is an exciting addition to the literature on machine learning and graphical models. What makes it unique and interesting is that it provides a unified treatment of machine learning and related fields through graphical models, a framework of growing importance and popularity. Another feature of this book lies in its smooth transition from traditional artificial intelligence to modern machine learning. The book is well-written and truly pleasant to read. I believe that it will appeal to students and researchers with or without a solid mathematical background.' Zheng-Hua Tan, Aalborg University, Denmark
'With approachable text, examples, exercises, guidelines for teachers, a MATLAB toolbox and an accompanying website, Bayesian Reasoning and Machine Learning by David Barber provides everything needed for your machine learning course. Only students not included.' Jaakko Hollmen, Aalto University
'The chapters on graphical models form one of the clearest and most concise presentations I have seen ... The exposition throughout uses numerous diagrams and examples, and the book comes with an extensive software toolbox - these will be immensely helpful for students and educators. It's also a great resource for self-study.' Arindam Banerjee, University of Minnesota
'I repeatedly get unsolicited comments from my students that the contents of this book have been very valuable in developing their understanding of machine learning ... My students praise this book because it is both coherent and practical, and because it makes fewer assumptions regarding the reader's statistical knowledge and confidence than many books in the field.' Amos Storkey, University of Edinburgh
Book Information
ISBN 9780521518147
Author David Barber
Format Hardback
Page Count 735
Imprint Cambridge University Press
Publisher Cambridge University Press
Weight(grams) 1710g
Dimensions(mm) 251mm * 193mm * 37mm