Combinations of Affinity Functions for Different Community Detection Algorithms in Social Networks

Javier Fumanal Idocin, O. Cordón, M. Minárová, Amparo Alonso Betanzos, H. Bustince
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引用次数: 0

Abstract

Social network analysis is a popular discipline among the social and behavioural sciences, in which the relationships between different social entities are modelled as a network. One of the most popular problems in social network analysis is finding communities in its network structure. Usually, a community in a social network is a functional sub-partition of the graph. However, as the definition of community is somewhat imprecise, many algorithms have been proposed to solve this task, each of them focusing on different social characteristics of the actors and the communities. In this work we propose to use novel combinations of affinity functions, which are designed to capture different social mechanics in the network interactions. We use them to extend already existing community detection algorithms in order to combine the capacity of the affinity functions to model different social interactions than those exploited by the original algorithms.
社交网络中不同社区检测算法的亲和力函数组合
社会网络分析是社会和行为科学中的一门流行学科,其中不同社会实体之间的关系被建模为一个网络。社会网络分析中最常见的问题之一是在其网络结构中寻找社区。通常,社交网络中的社区是图的功能子分区。然而,由于社区的定义有些不精确,已经提出了许多算法来解决这一任务,每种算法都关注行动者和社区的不同社会特征。在这项工作中,我们建议使用新的亲和力函数组合,旨在捕捉网络交互中的不同社会机制。我们使用它们来扩展已经存在的社区检测算法,以便结合亲和力函数的能力来模拟不同于原始算法所利用的社会互动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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