Title :
The effect of nogood learning in distributed constraint satisfaction
Author :
Hirayama, Katsutoshi ; Yokoo, Makoto
Author_Institution :
Kobe Univ. of Mercantile Marine, Japan
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;
Conference_Titel :
Distributed Computing Systems, 2000. Proceedings. 20th International Conference on
Conference_Location :
Taipei
Print_ISBN :
0-7695-0601-1
DOI :
10.1109/ICDCS.2000.840919