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The concept of modelling using graph theory has its origin in several scientific areas, notably statistics, physics, genetics, and engineering. The use of graphical models in applied statistics has increased considerably over recent years and the theory has been greatly developed and extended. This book provides a self-contained introduction to the learning of graphical models from data, and includes detailed coverage of possibilistic networks - a relatively new reasoning tool that allows the user to infer results from problems with imprecise data. One major advantage of graphical modelling is that specialized techniques that have been developed in one field can be transferred into others easily. The methods described here are applied in a number of industries, including a recent quality testing programme at a major car manufacturer.
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Previews available in: English
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Graphical Models: Representations for Learning, Reasoning and Data Mining
2009, Wiley & Sons, Limited, John
in English
0470749555 9780470749555
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Graphical Models: Representations for Learning, Reasoning and Data Mining
2009, Wiley & Sons, Incorporated, John
in English
0470749563 9780470749562
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Graphical Models: Methods for Data Analysis and Mining
March 15, 2002, Wiley, J. Wiley
in English
0470843373 9780470843376
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Book Details
First Sentence
"Since this book is about graphical models and reasoning with them, we start by saying a few words about reasoning in general, with a focus on inferences under imprecision and uncertainty and the calculi to model these (cf. [Borgelt et al. 1998a])."
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Feedback?December 10, 2024 | Edited by MARC Bot | import existing book |
August 12, 2020 | Created by ImportBot | import existing book |