A tabu search based memetic algorithm for the max-mean dispersion problem

Given a set V of n elements and a distance matrix [dij]n×n among elements, the max-mean dispersion problem (MaxMeanDP) consists in selecting a subset M from V such that the mean dispersion (or distance) among the selected elements is maximized. Being a useful model to formulate several relevant appl...

Full description

Saved in:
Bibliographic Details
Published inComputers & operations research Vol. 72; pp. 118 - 127
Main Authors Lai, Xiangjing, Hao, Jin-Kao
Format Journal Article
LanguageEnglish
Published New York Elsevier Ltd 01.08.2016
Pergamon Press Inc
Elsevier
Subjects
Online AccessGet full text
ISSN0305-0548
1873-765X
1873-765X
0305-0548
DOI10.1016/j.cor.2016.02.016

Cover

More Information
Summary:Given a set V of n elements and a distance matrix [dij]n×n among elements, the max-mean dispersion problem (MaxMeanDP) consists in selecting a subset M from V such that the mean dispersion (or distance) among the selected elements is maximized. Being a useful model to formulate several relevant applications, MaxMeanDP is known to be NP-hard and thus computationally difficult. In this paper, we present a tabu search based memetic algorithm for MaxMeanDP which relies on solution recombination and local optimization to find high quality solutions. One key contribution is the identification of the fast neighborhood induced by the one-flip operator which takes linear time. Computational experiments on the set of 160 benchmark instances with up to 1000 elements commonly used in the literature show that the proposed algorithm improves or matches the published best known results for all instances in a short computing time, with only one exception, while achieving a high success rate of 100%. In particular, we improve 53 previous best results (new lower bounds) out of the 60 most challenging instances. Results on a set of 40 new large instances with 3000 and 5000 elements are also presented. The key ingredients of the proposed algorithm are investigated to shed light on how they affect the performance of the algorithm. •The NP-hard max-mean dispersion problem is suitable to model various applications.•We introduce the first population-based memetic method to solve this problem.•We report 53 improved best results (new lower bounds) for 160 benchmark instances with upto 1000 elements.•We introduce 40 large instances with upto 5000 elements and show computational results.•We study the key ingredients of the algorithm to shed light on their respective role.
Bibliography:SourceType-Scholarly Journals-1
ObjectType-Feature-1
content type line 14
ObjectType-Article-1
ObjectType-Feature-2
content type line 23
ISSN:0305-0548
1873-765X
1873-765X
0305-0548
DOI:10.1016/j.cor.2016.02.016