社交网络中多目标团队快速组建方法

Bahareh Ashenagar, A. Hamzeh, Negar Foroutan Eghlidi, Ardavan Afshar
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引用次数: 8

摘要

近年来,社交网络的发展和普及创造了一个协作和交流的新世界。团队形成是社会网络分析领域的一个新的研究课题。假设存在一个由专家组成的社交网络,我们的目标是为特定项目组建最好的团队。最好的解决方案是团队成员之间的沟通成本最小化。将社会网络建模为一个图,其中节点代表专家,两个节点之间的边表示两个专家的先前合作。本文的贡献在于基于接近中心性和特征向量中心性来选择团队成员。在DBLP数据集上的实验结果表明,与以前的方法相比,我们的方法可以在更短的时间内完成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast approach for multi-objective team formation in social networks
In recent years, the growth and popularity of social networks have created a new world of collaboration and communication. Team formation is a new research topic in the area of social network analysis. Consider there is a social network of experts and the goal is to form the best possible team out of them for a given project. The best solution is a team with the minimized communication cost within team members. A social network is modeled as a graph, in which nodes represent experts and an edge between two nodes shows a prior collaboration of the two experts. The contribution of this paper is to select team members based on both closeness centrality and eigenvector centrality. Experimental results on the DBLP dataset show that our approach completes in lower time compared to the previous methods.
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