Constraint Satisfaction over Generalized Staircase Constraints
This work addresses incremental improvements in constraint satisfaction for AI and optimization domains by generalizing a known tractable class and enhancing algorithmic efficiency.
The paper tackles the problem of solving constraint satisfaction problems (CSPs) by introducing generalized staircase constraints, showing that arc consistency is sufficient for down staircase constraints and proposing an optimal O(cd) algorithm for arc consistency, which improves efficiency for up staircase constraints.
One of the key research interests in the area of Constraint Satisfaction Problem (CSP) is to identify tractable classes of constraints and develop efficient solutions for them. In this paper, we introduce generalized staircase (GS) constraints which is an important generalization of one such tractable class found in the literature, namely, staircase constraints. GS constraints are of two kinds, down staircase (DS) and up staircase (US). We first examine several properties of GS constraints, and then show that arc consistency is sufficient to determine a solution to a CSP over DS constraints. Further, we propose an optimal O(cd) time and space algorithm to compute arc consistency for GS constraints where c is the number of constraints and d is the size of the largest domain. Next, observing that arc consistency is not necessary for solving a DSCSP, we propose a more efficient algorithm for solving it. With regard to US constraints, arc consistency is not known to be sufficient to determine a solution, and therefore, methods such as path consistency or variable elimination are required. Since arc consistency acts as a subroutine for these existing methods, replacing it by our optimal O(cd) arc consistency algorithm produces a more efficient method for solving a USCSP.