DocumentCode
1982964
Title
The effect of nogood learning in distributed constraint satisfaction
Author
Hirayama, Katsutoshi ; Yokoo, Makoto
Author_Institution
Kobe Univ. of Mercantile Marine, Japan
fYear
2000
fDate
2000
Firstpage
169
Lastpage
177
Abstract
We present resolvent-based learning as a new nogood learning method for a distributed constraint satisfaction algorithm. This method is based on a look-back technique in constraint satisfaction algorithms and can efficiently make effective nogoods. We combine the method with the asynchronous weak-commitment search algorithm (AWC) and evaluate the performance of the resultant algorithm on distributed 3-coloring problems and distributed 3SAT problems. As a result, we found that the resolvent-based learning works well compared to previous learning methods for distributed constraint satisfaction algorithms. We also found that the AWC with the resolvent-based learning is able to find a solution with fewer cycles than the distributed breakout algorithm, which was known to be the most efficient algorithm (in terms of cycles) for solving distributed constraint satisfaction problems
Keywords
constraint handling; distributed algorithms; learning (artificial intelligence); multi-agent systems; problem solving; search problems; software performance evaluation; asynchronous weak-commitment search algorithm; distributed 3-coloring problems; distributed 3SAT problems; distributed breakout algorithm; distributed constraint satisfaction algorithm; look-back technique; nogood learning; performance evaluation; problem solving; resolvent-based learning; Artificial intelligence; Costs; Disk recording; Distributed algorithms; Laboratories; Learning systems; Multiagent systems; Resource management;
fLanguage
English
Publisher
ieee
Conference_Titel
Distributed Computing Systems, 2000. Proceedings. 20th International Conference on
Conference_Location
Taipei
ISSN
1063-6927
Print_ISBN
0-7695-0601-1
Type
conf
DOI
10.1109/ICDCS.2000.840919
Filename
840919
Link To Document