Autores
Menchaca Méndez Rolando
Menchaca Méndez Ricardo
García Díaz Jesús
Sánchez Hernández Jairo Javier
Título When a Worse Approximation Factor Gives Better Performance: A 3-Approximation Algorithm for the Vertex k-Center Problem
Tipo Revista
Sub-tipo JCR
Descripción Journal of Heuristics
Resumen The vertex k-center selection problem is a well known NP-Hard minimization problem that can not be solved in polynomial time within a p < 2 approximation factor, unless P = NP . Even though there are algorithms that achieve this 2-approximation bound, they perform poorly on most benchmarks compared to some heuristic algorithms. This seems to happen because the 2-approximation algorithms take, at every step, very conservative decisions in order to keep the approximation guarantee. In this paper we propose an algorithm that exploits the same structural properties of the problem that the 2-approximation algorithms use, but in a more relaxed manner. Instead of taking the decision that guarantees a 2-approximation, our algorithm takes the best decision near the one that guarantees the 2-approximation. This results in an algorithm with a worse approximation factor (a 3-approximation), but that outperforms all the previously known approximation algorithms on the most well known benchmarks for the problem, namely, the pmed instances from OR-Lib (Beasly in J Oper Res Soc 41(11):1069-1072, 1990) and some instances from TSP-Lib (Reinelt in ORSA J Comput 3:376-384, 1991). However, the O(n(4)) running time of this algorithm becomes unpractical as the input grows. In order to improve its running time, we modified this algorithm obtaining a heuristic that outperforms not only all the previously known approximation algorithms, but all the polynomial heuristics proposed up to date.
Observaciones DOI 10.1007/s10732-017-9345-x
Lugar Dordrecht
País Paises Bajos
No. de páginas 349-366
Vol. / Cap. v. 23 no. 5
Inicio 2017-10-01
Fin
ISBN/ISSN