Title of article
An Overview of Some Recent Developments in Bayesian Problem-Solving Techniques Introduction to This Special Issue
Author/Authors
Haddawy، Peter نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1999
Pages
-10
From page
11
To page
0
Abstract
The last few years have seen a surge in interest in the use of techniques from Bayesian decision theory to address problems in AI. Decision theory provides a normative framework for representing and reasoning about decision problems under uncertainty. Within the context of this framwork, researchers in uncertainty in the AI community have been developing computational techniques for building rational agents and representations suited to engineering their knowledge bases. This special issue reviews recent research in Bayesian problem-solving techniques. The articles cover the topics of inference in Bayesian networks, decision-theoretic planning, and qualitative decision theory. Here, I provide a brief introduction to Bayesian networks and then cover applications of Bayesian problem-solving techniques, knowledge-based model construction and structured representations, and the learning of graphic probability models.
Journal title
AI Magazine
Serial Year
1999
Journal title
AI Magazine
Record number
2585
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