Open Access
EURO Journal on Computational Optimization, volume 5, issue 4, pages 467-498
Evaluating balancing on social networks through the efficient solution of correlation clustering problems
Publication type: Journal Article
Publication date: 2017-12-01
scimago Q1
SJR: 0.983
CiteScore: 3.5
Impact factor: 2.6
ISSN: 21924406, 21924414
Computational Mathematics
Control and Optimization
Modeling and Simulation
Management Science and Operations Research
Abstract
One challenge for social network researchers is to evaluate balance in a social network. The degree of balance in a social group can be used as a tool to study whether and how this group evolves to a possible balanced state. The solution of clustering problems defined on signed graphs can be used as a criterion to measure the degree of balance in social networks and this measure can be obtained with the optimal solution of the correlation clustering problem, as well as a variation of it, the relaxed correlation clustering problem. However, solving these problems is no easy task, especially when large network instances need to be analyzed. In this work, we contribute to the efficient solution of both problems by developing sequential and parallel ILS metaheuristics. Then, by using our algorithms, we solve the problem of measuring the structural balance on large real-world social networks.
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