
handle: 11585/64038 , 11585/7882 , 11585/40976
The NValue constraint counts the number of different values assigned to a vector of variables. Propagating generalized arc consistency on this constraint is NP-hard. We show that computing even the lower bound on the number of values is NP-hard. We therefore study different approximation heuristics for this problem. We introduce three new methods for computing a lower bound on the number of values. The first two are based on the maximum independent set problem and are incomparable to a previous approach based on intervals. The last method is a linear relaxation of the problem. This gives a tighter lower bound than all other methods, but at a greater asymptotic cost.
[INFO.INFO-AI] Computer Science [cs]/Artificial Intelligence [cs.AI], NVALUE CONSTRAINT; NP-HARD; PRUNING; LINEAR RELAXATION; GLOBAL CONSTRAINTS, Linear relaxation, Analysis of algorithms and problem complexity, pruning, NValue constraint, ., NP-hard, AtMostNValue, Pruning, AtleastNValue, global constraints, Computational difficulty of problems (lower bounds, completeness, difficulty of approximation, etc.), linear relaxation, Global constraints, Problem solving in the context of artificial intelligence (heuristics, search strategies, etc.)
[INFO.INFO-AI] Computer Science [cs]/Artificial Intelligence [cs.AI], NVALUE CONSTRAINT; NP-HARD; PRUNING; LINEAR RELAXATION; GLOBAL CONSTRAINTS, Linear relaxation, Analysis of algorithms and problem complexity, pruning, NValue constraint, ., NP-hard, AtMostNValue, Pruning, AtleastNValue, global constraints, Computational difficulty of problems (lower bounds, completeness, difficulty of approximation, etc.), linear relaxation, Global constraints, Problem solving in the context of artificial intelligence (heuristics, search strategies, etc.)
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