多维社交网络中社区检测的离散群体搜索优化器

M. Ahmed, Mohamed M. Elwakil, A. Hassanien, Ehab E. Hassanien
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引用次数: 3

摘要

多维度是现实世界社交网络的一个独特方面。多维社交网络的出现是由于Facebook、Twitter、YouTube等大多数社交媒体网站允许人们通过不同的社交活动相互交流,反映了他们之间不同的关系。近年来,对隐藏在多维社会网络中的社区结构的研究引起了人们的广泛关注。在处理这些网络时,社区检测问题的概念转变为发现跨所有网络维度的共享组结构,使得同一组中的成员彼此紧密连接,但与组外的其他成员之间的连接是松散的。社区检测主题的研究传统上集中在网络实体之间代表一种交互类型或一种关系的网络上。在本文中,我们提出离散群体搜索优化器(DGSO-MDNet)来解决多维社交网络中的社区检测问题,而不需要事先知道社区的数量。该方法以寻找多片模块化最大化的社团结构为目标函数。所提出的DGSO-MDNet算法采用基于区域的邻接表示和多个离散算子。在合成网络和现实生活网络上的实验表明,与文献中其他高性能算法相比,该算法能够成功地检测隐藏在这些网络中的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete Group Search Optimizer for community detection in multidimensional social network
Multidimensionality is a distinctive aspect of real world social networks. Multidimensional social networks appeared as a result of that most social media sites such as Facebook, Twitter, and YouTube enable people to interact with each other through different social activities, reflecting different kinds of relationships between them. Recently, studying community structures hidden in multidimensional social networks has attracted a lot of attention. When dealing with these networks, the concept of community detection problem changes to be the discovery of the shared group structure across all network dimensions, such that members in the same group are tightly connected with each other, but are loosely connected with others outside the group. Studies in community detection topic have traditionally focused on networks that represent one type of interactions or one type of relationships between network entities. In this paper, we propose Discrete Group Search Optimizer (DGSO-MDNet) to solve the community detection problem in Multidimensional social networks, without any prior knowledge about the number of communities. The method aims to find community structure that maximizes multi-slice modularity, as an objective function. The proposed DGSO-MDNet algorithm adopts the locus-based adjacency representation and several discrete operators. Experiments on synthetic and real life networks show the capability of the proposed algorithm to successfully detect the structure hidden within these networks compared with other high performance algorithms in the literature.
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