Fr. 102.00

Speeding Up Distributed Constraint Optimization Search Algorithms

English, German · Paperback / Softback

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Description

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Distributed constraint optimization (DCOP) is a model where several agents coordinate with each other to take on values so as to minimize the sum of the resulting constraint costs, which are dependent on the values of the agents. This model is becoming popular for formulating and solving multi-agent coordination problems. As a result, researchers have developed a class of DCOP algorithms that use search techniques. Since solving DCOP problems optimally is NP-hard, solving large problems efficiently becomes an issue. In this book, I show how one can speed up DCOP search algorithms by applying insights gained from centralized search algorithms, specifically by using an appropriate search strategy; by sacrificing solution optimality; by using more memory; and by reusing information gained from solving similar DCOP problems.

About the author










William Yeoh is an assistant professor of computer science at New Mexico State University. He received his Ph.D. in computer science at the University of Southern California. His research interests include multi-agent systems, distributed constraint reasoning, heuristic search, and planning with uncertainty.

Product details

Authors William Yeoh
Publisher Scholar's Press
 
Languages English, German
Product format Paperback / Softback
Released 01.01.2014
 
EAN 9783639707212
ISBN 978-3-639-70721-2
No. of pages 196
Dimensions 150 mm x 220 mm x 10 mm
Weight 277 g
Subjects Guides
Natural sciences, medicine, IT, technology > IT, data processing > Miscellaneous

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