Bayesian Networks and Decision Graphs

Free Download

Authors:

Edition: 2nd ed

Series: Information science and statistics

ISBN: 9780387682815, 0-387-68281-3, 0-387-68282-1, 9780387682822

Size: 3 MB (3573429 bytes)

Pages: 457/457

File format:

Language:

Publishing Year:

Category: Tags: ,

Finn B. Jensen, Thomas Graven-Nielsen9780387682815, 0-387-68281-3, 0-387-68282-1, 9780387682822

Probabilistic graphical models and decision graphs are powerful modeling tools for reasoning and decision making under uncertainty. As modeling languages they allow a natural specification of problem domains with inherent uncertainty, and from a computational perspective they support efficient algorithms for automatic construction and query answering. This includes belief updating, finding the most probable explanation for the observed evidence, detecting conflicts in the evidence entered into the network, determining optimal strategies, analyzing for relevance, and performing sensitivity analysis.

The book introduces probabilistic graphical models and decision graphs, including Bayesian networks and influence diagrams. The reader is introduced to the two types of frameworks through examples and exercises, which also instruct the reader on how to build these models.

The book is a new edition of Bayesian Networks and Decision Graphs by Finn V. Jensen. The new edition is structured into two parts. The first part focuses on probabilistic graphical models. Compared with the previous book, the new edition also includes a thorough description of recent extensions to the Bayesian network modeling language, advances in exact and approximate belief updating algorithms, and methods for learning both the structure and the parameters of a Bayesian network. The second part deals with decision graphs, and in addition to the frameworks described in the previous edition, it also introduces Markov decision processes and partially ordered decision problems. The authors also

provide a well-founded practical introduction to Bayesian networks, object-oriented Bayesian networks, decision trees, influence diagrams (and variants hereof), and Markov decision processes.

give practical advice on the construction of Bayesian networks, decision trees, and influence diagrams from domain knowledge.

give several examples and exercises exploiting computer systems for dealing with Bayesian networks and decision graphs.

present a thorough introduction to state-of-the-art solution and analysis algorithms.

The book is intended as a textbook, but it can also be used for self-study and as a reference book.


Table of contents :
cover……Page 1
Information Science and Statistics……Page 3
Bayesian Networks and Decision Graphs……Page 4
Preface……Page 6
Table of Contents……Page 11
1 Prerequisites on Probability Theory……Page 17
Part I Probabilistic Graphical Models……Page 36
2 Causal and Bayesian Networks……Page 37
3 Building Models……Page 65
4 Belief Updating in Bayesian Networks……Page 123
5 Analysis Tools for Bayesian Networks……Page 181
6 Parameter Estimation……Page 208
7 Learning the Structure of Bayesian Networks……Page 242
8 Bayesian Networks as Classifiers……Page 278
Part II Decision Graphs……Page 290
9 Graphical Languages for Specification of Decision Problems……Page 291
10 Solution Methods for Decision Graphs……Page 355
11 Methods for Analyzing Decision Problems……Page 418
List of Notation……Page 440
References……Page 442
Index……Page 451

Reviews

There are no reviews yet.

Be the first to review “Bayesian Networks and Decision Graphs”
Shopping Cart
Scroll to Top