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Optimization Methods for Logical Inference (Chandru/Optimization) || Introduction

โœ Scribed by Chandru, Vijay; Hooker, John


Book ID
120265603
Publisher
John Wiley & Sons, Inc.
Year
2011
Tongue
English
Weight
573 KB
Edition
1
Category
Article
ISBN
0471570354

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โœฆ Synopsis


Merging logic and mathematics in deductive inference-an innovative, cutting-edge approach.

Optimization methods for logical inference? Absolutely, say Vijay Chandru and John Hooker, two major contributors to this rapidly expanding field. And even though solving logical inference problems with optimization methods may seem a bit like eating sauerkraut with chopsticks. . . it is the mathematical structure of a problem that determines whether an optimization model can help solve it, not the context in which the problem occurs.

Presenting powerful, proven optimization techniques for logic inference problems, Chandru and Hooker show how optimization models can be used not only to solve problems in artificial intelligence and mathematical programming, but also have tremendous application in complex systems in general. They survey most of the recent research from the past decade in logic/optimization interfaces, incorporate some of their own results, and emphasize the types of logic most receptive to optimization methods-propositional logic, first order predicate logic, probabilistic and related logics, logics that combine evidence such as Dempster-Shafer theory, rule systems with confidence factors, and constraint logic programming systems.

Requiring no background in logic and clearly explaining all topics from the ground up, Optimization Methods for Logical Inference is an invaluable guide for scientists and students in diverse fields, including operations research, computer science, artificial intelligence, decision support systems, and engineering.

Booknews

Presents powerful optimization techniques for logic inference problems, showing how optimization models can be used to solve problems in artificial intelligence and mathematical programming and in complex systems in general. Surveys research from the past decade in logic/optimization interfaces, offers original results, and emphasizes types of logic most receptive to optimization methods, such as propositional logic, logics that combine evidence, and constraint logic programming systems. For students and scientists in fields including operations research, computer science, and engineering. Annotation c. by Book News, Inc., Portland, Or.


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