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arxiv: 1307.2715 · v1 · pith:F6XI2RFJnew · submitted 2013-07-10 · 📊 stat.ML

Optimisation dans la d\'etection de communaut\'es recouvrantes et \'equilibre de Nash

classification 📊 stat.ML
keywords functionalgorithmsdetectionoptimumalgorithmgraphsnashachieve
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Community detection in graphs has been the subject of many algorithms. Recent methods want to optimize a modularity function which shows a maximum of relationships within communities and found a minimum of inter-community relations. these algorithms are applied to unipartite, multipartite and directed graphs. However, given the NP-completeness of the problem, these algorithms are heuristics that do not guarantee an optimum. In this paper we introduce an algorithm which, based on an approximate solution obtained through a efficient detection algorithm, modifie it to achieve a local optimum based on a function. this reassignment function is a potential function and therefore the computed optimum is a Nash equilibrium. We supplement our method with an overlap function that allows to have simultaneously the two detection modes. Several experiments show the interest of our approach.

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