Applying local search to temporal reasoning

J. Thornton1, M. Beaumont1, A. Sattar1, M. Maher2
1School of Information Technology, Griffith University Gold Coast, Southport, QLD, Australia
2Department of Math. and CS, Loyola University, Chicago, IL, USA

Tóm tắt

Local search techniques have attracted considerable interest in the artificial intelligence (AI) community since the development of GSAT (Selman et al., 1992) and the min-conflicts heuristic (Minton et al., 1992) for solving large propositional satisfiability (SAT) problems and binary constraint satisfaction problems (CSPs) respectively. Newer SAT techniques, such as the Discrete Langrangian Method (DLM) (Shang and Wah, 1998), have significantly improved on GSAT and can also be applied to general constraint satisfaction and optimisation. However, local search has yet to be successfully employed in solving temporal constraint satisfaction problems (TCSPs). We argue that current formalisms for representing TCSPs are inappropriate for a local search approach, and we propose an alternative CSP-based end-point ordering model for temporal reasoning. In particular we look at modelling and solving problems formulated using Allen's (1983) interval algebra (IA) and propose a new constraint weighting algorithm derived from DLM. Using a set of randomly generated IA problems, we show that our local search outperforms Nebel's (1997) backtracking algorithm on larger and more difficult consistent problems.

Từ khóa

#Artificial intelligence #Costs #Algebra #Feedback #Information technology #Gold #Australia #Constraint optimization #Process planning #Natural language processing

Tài liệu tham khảo

mackworth, 1985, Constraint satisfaction. Technical report, TR-85–15 University of British Columbia 10.1016/0004-3702(92)90004-H 10.1023/A:1008287028851 10.1007/BF00137869 van beek, 1996, The design and an experimental analysis of algorithms for temporal reasoning, Journal of AI Research, 4, 1 10.1016/0004-3702(92)90007-K vilain, 1986, Constraint propagation algorithms for temporal reasoning, Proceedings of the Fifth National Conference on Artificial Intelligence (AAAI-86), 377 10.1023/A:1009717525330 10.1145/200836.200848 beaumont, 2001, Solving over-constrained temporal reasoning problems, Proceedings of the 14th Australian Joint Conference on Artificial Intelligence (AI'01), 37 selman, 1992, A new method for solving hard satisfiability problems, Proceedings of the Tenth National Conference on Artificial Intelligence (AAAI-92), 440 10.1145/182.358434