Por favor, use este identificador para citar o enlazar este ítem: http://hdl.handle.net/10259/9822
Título
Dataset of the paper “A stepped tabu search method for the clique partitioning problem”. Applied Intelligence, 53, 16275-16292
Editorial
Universidad de Burgos
Fecha de publicación
2022
Resumen
Given an undirected graph, a clique is a subset of vertices in which the induced subgraph is complete; that is, all pairs of vertices of this subset are adjacent. Clique problems in graphs are very important due to their numerous applications. One of these problems is the clique partitioning problem (CPP), which consists of dividing the set of vertices of a graph into the smallest number of cliques possible. The CPP is an NP-hard problem with many application fields (timetabling, manufacturing, scheduling, telecommunications, etc.). Despite its great applicability, few recent studies have focused on proposing specific resolution methods for the CPP. This article presents a resolution method that combines multistart strategies with tabu search. The most novel characteristic of our method is that it allows unfeasible solutions to be visited, which facilitates exploration of the solution space. The computational tests show that our method performs better than previous methods proposed for this problem. In fact, our method strictly improves the results of these methods in most of the instances considered while requiring less computation time.
Palabras clave
Clique partitioning problem
Metaheuristics
Tabu search
Multistart methods
Materia
Investigación operativa
Operations research
Modelos matemáticos
Mathematical models
Referenciado en
Aparece en las colecciones