Bayesian Network Technologies: Applications and Graphical Models: Applications and Graphical Models

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Mittal, Ankush
Idea Group Inc (IGI), Mar 31, 2007 - Computers - 368 pages
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Bayesian networks are now being used in a variety of artificial intelligence applications. These networks are high-level representations of probability distributions over a set of variables that are used for building a model of the problem domain.

Bayesian Network Technologies: Applications and Graphical Models provides an excellent and well-balanced collection of areas where Bayesian networks have been successfully applied. This book describes the underlying concepts of Bayesian Networks in an interesting manner with the help of diverse applications, and theories that prove Bayesian networks valid. Bayesian Network Technologies: Applications and Graphical Models provides specific examples of how Bayesian networks are powerful machine learning tools critical in solving real-life problems.


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About the author (2007)

Ankush Mittal received the B. Tech. (Computer Science and Engg.) and M. S. by Research (Computer Science and Engg.) degrees from the Indian Institute of Technology, Delhi in 1996 and 1998 respectively. He got his PhD degree from Electrical and Computer Engg, The National University of Singapore. From March 2001 for around two years, he was a faculty member in the Department of Computer Science, National University of Singapore. He is presently serving as Assistant Professor at Indian Institute of Technology, Roorkee. His research interests include image processing, bioinformatics and E-learning. He has published more than 90 papers in top journals and conferences.

Ashraf A. Kassim is with the Electrical & Computer Engineering Department of the National University of Singapore (NUS) and vice-dean of the NUS School of Engineering. He obtained his Bachelor of Engineering with first class honors and Master of Engineering in electrical engineering from NUS, before receiving his PhD from Carnegie Mellon University (1993). Prior to joining NUS, Dr. Kassim was involved in machine vision research at Texas Instruments. His main research interests are in the areas of computer vision, image and video processing. He has over 100 international journal and conference publications. He has been a program and organizing committee member of a number of international conferences. Dr. Kassim is an editor of Machine Vision and Applications Journal. [Editor]

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