Bayesian Artificial Intelligence (Chapman & Hall/CRC Computer Science & Data Analysis) - Hardcover

Book 9 of 23: Chapman & Hall/CRC Computer Science & Data Analysis

Korb, Kevin B.; Nicholson, Ann E.

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    22 ratings by Goodreads
 
9781584883876: Bayesian Artificial Intelligence (Chapman & Hall/CRC Computer Science & Data Analysis)

Synopsis

As the power of Bayesian techniques has become more fully realized, the field of artificial intelligence has embraced Bayesian methodology and integrated it to the point where an introduction to Bayesian techniques is now a core course in many computer science programs. Unlike other books on the subject, Bayesian Artificial Intelligence keeps mathematical detail to a minimum and covers a broad range of topics. The authors integrate all of Bayesian net technology and learning Bayesian net technology and apply them both to knowledge engineering. They emphasize understanding and intuition but also provide the algorithms and technical background needed for applications. Software, exercises, and solutions are available on the authors’ website.

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About the Author

Kevin B. Korb is a Reader in the Clayton School of Information Technology at Monash University in Australia. He earned his Ph.D. from Indiana University. His research encompasses causal discovery, probabilistic causality, evaluation theory, informal logic and argumentation, artificial evolution, and philosophy of artificial intelligence.

Ann E. Nicholson an Associate Professor in the Clayton School of Information Technology at Monash University in Australia. She earned her Ph.D. from the University of Oxford. Her research interests include artificial intelligence, probabilistic reasoning, Bayesian networks, knowledge engineering, plan recognition, user modeling, evolutionary ethics, and data mining

Review

A nice feature of the book is the extensive survey of the available software, much of it downloadable for free on the web. ... [This book] provides a very solid introduction to BNs for those statisticians who may have heard about BNs but are unfamiliar with their basics. The many examples clearly illustrate the topics, and there are many hints at the broader applications.
- Technometrics, Feb. 2005, Vol. 47, No. 1

This book certainly deserves to be in the library of any institution where undergraduate or graduate courses in computer science are taught, and would also be an excellent resource for anyone who wants to learn more about this cutting-edge area of computing. Summing Up: Essential.
- Choice, June 2004, Vol. 41, No. 10

... this excellent book would also serve well for final year undergraduate courses in mathematics or statistics and is a solid first reference text for researchers wanting to implement Bayesian belief network (BBN) solutions for practical problems. ... beautifully presented, nicely written, and made accessible. Mathematical ideas, some quite deep, are presented within the flow but do not get in the way. This has the advantage that students can see and interpret the mathematics in the practical context, whereas practitioners can acquire, to personal taste, the mathematical seasoning. ... If you are interested in applying BBN methods to real life problems, this book is a good place to start.
- Journal of the Royal Statistical Society, Series A., Vol. 157(3)

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Other Popular Editions of the Same Title

9781439815915: Bayesian Artificial Intelligence (Chapman & Hall/CRC Computer Science & Data Analysis)

Featured Edition

ISBN 10:  1439815917 ISBN 13:  9781439815915
Publisher: CRC Press, 2010
Hardcover