arXiv Analytics

Sign in

arXiv:1305.3321 [cs.AI]AbstractReferencesReviewsResources

A Mining-Based Compression Approach for Constraint Satisfaction Problems

Said Jabbour, Lakhdar Sais, Yakoub Salhi

Published 2013-05-14Version 1

In this paper, we propose an extension of our Mining for SAT framework to Constraint satisfaction Problem (CSP). We consider n-ary extensional constraints (table constraints). Our approach aims to reduce the size of the CSP by exploiting the structure of the constraints graph and of its associated microstructure. More precisely, we apply itemset mining techniques to search for closed frequent itemsets on these two representation. Using Tseitin extension, we rewrite the whole CSP to another compressed CSP equivalent with respect to satisfiability. Our approach contrast with previous proposed approach by Katsirelos and Walsh, as we do not change the structure of the constraints.

Comments: arXiv admin note: substantial text overlap with arXiv:1304.4415
Categories: cs.AI
Related articles: Most relevant | Search more
arXiv:2011.07509 [cs.AI] (Published 2020-11-15)
Automated Intersection Management with MiniZinc
arXiv:2002.03766 [cs.AI] (Published 2020-01-31)
Testing Unsatisfiability of Constraint Satisfaction Problems via Tensor Products
arXiv:1005.0089 [cs.AI] (Published 2010-05-01)
The Exact Closest String Problem as a Constraint Satisfaction Problem