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Bayesian Artificial Intelligence Book - Chapman & Hall/CRC Computer Science & Data Analysis Textbook | AI Learning, Machine Studying & Data Science Applications
Bayesian Artificial Intelligence Book - Chapman & Hall/CRC Computer Science & Data Analysis Textbook | AI Learning, Machine Studying & Data Science Applications

Bayesian Artificial Intelligence Book - Chapman & Hall/CRC Computer Science & Data Analysis Textbook | AI Learning, Machine Studying & Data Science Applications

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Description

Updated and expanded, Bayesian Artificial Intelligence, Second Edition provides a practical and accessible introduction to the main concepts, foundation, and applications of Bayesian networks. It focuses on both the causal discovery of networks and Bayesian inference procedures. Adopting a causal interpretation of Bayesian networks, the authors discuss the use of Bayesian networks for causal modeling. They also draw on their own applied research to illustrate various applications of the technology.New to the Second EditionNew chapter on Bayesian network classifiersNew section on object-oriented Bayesian networksNew section that addresses foundational problems with causal discovery and Markov blanket discoveryNew section that covers methods of evaluating causal discovery programsDiscussions of many common modeling errorsNew applications and case studiesMore coverage on the uses of causal interventions to understand and reason with causal Bayesian networksIllustrated with real case studies, the second edition of this bestseller continues to cover the groundwork of Bayesian networks. It presents the elements of Bayesian network technology, automated causal discovery, and learning probabilities from data and shows how to employ these technologies to develop probabilistic expert systems.Web ResourceThe book’s website at www.csse.monash.edu.au/bai/book/book.html offers a variety of supplemental materials, including example Bayesian networks and data sets. Instructors can email the authors for sample solutions to many of the problems in the text.

Reviews

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Bayesian Artificial Intelligence, Second Edition by Kevin B. Korb and Ann E. Nicholson is among one of the very few books which explain the probabilistic graphical models and Bayesian belief networks in a balanced way; i.e. without making it a mathematical exercise in futility or by dumbing it down too much to make it a `practical guide'. This book is an interesting read and knowing the KDD genre, it's few and far between when one can say these words about a machine learning book.Bayesian Artificial Intelligence is organized into three main sections; probabilistic reasoning, learning causal models and knowledge engineering. The book discusses Bayesian networks as a function of their usage i.e. for reasoning, learning and inference. Book begins with an introduction to Probabilistic Reasoning where authors discusses Bayesian reasoning, reasoning under uncertainty, uncertainty in artificial intelligence, probability calculus and other related concepts. Authors then provide a primer of Bayesian networks before discussing inference in Bayesian Networks. In the chapter titled applications of Bayesian network, authors elaborate on different types of applications and their practical implementations. In the second part authors focus on learning the causal models, learning the probabilities from datasets, Bayesian Network classifiers, learning linear causal models, learning discrete causal structure and so on. The third section concentrates on knowledge engineering with Bayesian Network; it has a long chapter which talks about different aspects of knowledge engineering for example KEBN life cycle, Bayesian network modeling, how Bayesian structure is build, kept and developed etc. Finally we see the case studies for different sections and the software packages associated with it.I personally really enjoyed this book mainly because it's to the point, precise and well written. Due to the wide range of the field of machine learning and implementation of Belief networks, it becomes quite challenging to comprehensively cover the area. If you would like to read more about the general graphical models and probabilistic graphical models in machine learning, there are other texts out there however if your focus is Bayesian Artificial Intelligence and the belief networks, this book is quite useful.The book is not written as a typical text book but still provides a set of problems at the end of each chapter. For theorem solvers and theory lovers, there are also various theoretical issues discussed in this book throughout related to the Bayesian provability and probability calculus. Overall it is not a so called `math heavy' or theorem proving text but rather quite practical introduction to Bayesian AI. I highly recommend this book if you would like to learn Bayesian AI, Bayesian belief networks, Bayesian inference, learning, reasoning or any pertaining disciplines.