TY - JOUR
T1 - Computing relaxations for the three-dimensional stable matching problem with cyclic preferences
AU - Cseh, Ágnes
AU - Escamocher, Guillaume
AU - Quesada, Luis
N1 - Publisher Copyright:
© 2023, The Author(s).
PY - 2023/6
Y1 - 2023/6
N2 - Constraint programming has proven to be a successful framework for determining whether a given instance of the three-dimensional stable matching problem with cyclic preferences (3dsm-cyc) admits a solution. If such an instance is satisfiable, constraint models can even compute its optimal solution for several different objective functions. On the other hand, the only existing output for unsatisfiable 3dsm-cyc instances is a simple declaration of impossibility. In this paper, we explore four ways to adapt constraint models designed for 3dsm-cyc to the maximum relaxation version of the problem, that is, the computation of the smallest part of an instance whose modification leads to satisfiability. We also extend our models to support the presence of costs on elements in the instance, and to return the relaxation with lowest total cost for each of the four types of relaxation. Empirical results reveal that our relaxation models are efficient, as in most cases, they show little overhead compared to the satisfaction version.
AB - Constraint programming has proven to be a successful framework for determining whether a given instance of the three-dimensional stable matching problem with cyclic preferences (3dsm-cyc) admits a solution. If such an instance is satisfiable, constraint models can even compute its optimal solution for several different objective functions. On the other hand, the only existing output for unsatisfiable 3dsm-cyc instances is a simple declaration of impossibility. In this paper, we explore four ways to adapt constraint models designed for 3dsm-cyc to the maximum relaxation version of the problem, that is, the computation of the smallest part of an instance whose modification leads to satisfiability. We also extend our models to support the presence of costs on elements in the instance, and to return the relaxation with lowest total cost for each of the four types of relaxation. Empirical results reveal that our relaxation models are efficient, as in most cases, they show little overhead compared to the satisfaction version.
KW - 3dsm-cyc
KW - Almost stable matching
KW - Constraint Programming
KW - Relaxation
KW - Three-dimensional stable matching with cyclic preferences
UR - https://www.scopus.com/pages/publications/85160854657
U2 - 10.1007/s10601-023-09346-3
DO - 10.1007/s10601-023-09346-3
M3 - Article
AN - SCOPUS:85160854657
SN - 1383-7133
VL - 28
SP - 138
EP - 165
JO - Constraints
JF - Constraints
IS - 2
ER -