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Artificial Intelligence - General, Anatomy, Medicine & Computer Technology, Expert Systems
Probabilistic Similarity Networks by David. Heckerman — book cover

Probabilistic Similarity Networks

by David. Heckerman
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Overview

In this remarkable blend of formal theory and practical application, David Heckerman develops methods for building normative expert systems—expert systems that encode knowledge in a decision-theoretic framework.

Heckerman introduces the similarity network and partition, two extensions to the influence diagram representation. He uses the new representations to construct Pathfinder, a large, normative expert system for the diagnosis of lymph-node diseases. Heckerman shows that such expert systems can be built efficiently, and that the use of a normative theory as the framework for representing knowledge can dramatically improve the quality of expertise that is delivered to the user. He concludes with a formal evaluation of the power of his methods for building normative expert systems. David Heckerman is Assistant Professor of Computer Science at the University of Southern California. He received his doctoral degree in Medical Information Sciences from Stanford University.

Contents: Introduction. Similarity Networks and Partitions: A Simple Example. Theory of Similarity Networks. Pathfinder: A Case Study. An Evaluation of Pathfinder. Conclusions and Future Work.

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Editorials

Booknews

Describes a new generation of expert systems--normative expert systems--which use decision theory rather than mimic the recommendations of experts. For readers with a background in artificial intelligence, decision analysis, or medical informatics. Annotation c. Book News, Inc., Portland, OR (booknews.com)

Book Details

Published
January 3, 1992
Publisher
Cambridge, Mass. : MIT Press, 1991.
Pages
264
Format
Hardcover
ISBN
9780262082068

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