基于相似虚拟网络的社交网络社区检测

Kanna AlFalahi, Yacine Atif, S. Harous
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引用次数: 15

摘要

聪明的营销模式可以利用社交网络中的社区来定位广告。然而,在合理的时间内提供准确的社区分区对于当前的在线大型社交网络来说是一个挑战。在本文中,我们提出了一种使用节点相似度技术来增强在线社交网络中的社区检测的方法。我们将这些技术应用于非加权社交网络来检测社区结构。我们提出的方法是在原始社交网络的基础上创建一个虚拟网络。在这一预处理步骤中,根据原始社会网络中节点的相似度添加虚拟边。因此,在任意两个相似的节点之间建立虚连接。然后在生成的虚拟网络上应用地标性CNM算法进行社区检测。这种被称为相似性- cnm的方法有望在模块化和检测速度方面进一步提高推断社区的质量。我们的实验评估研究证实了这些增益,其准确性得到了基于标准化互信息度量的研究的支持,该研究用于确定原始网络中实际社区与本文提出的方法发现的社区的相似程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community detection in social networks through similarity virtual networks
Smart marketing models could utilize communities within the social Web to target advertisements. However, providing accurate community partitions in a reasonable time is challenging for current online large-scale social networks. In this paper, we propose an approach to enhance community detection in online social networks using node similarity techniques. We apply these techniques on unweighted social networks to detect community structure. Our proposed approach creates a virtual network based on the original social network. Virtual edges are added during this pre-processing step based on nodes' similarity in the original social network. Hence, a virtual link is established between any two similar nodes. Then the landmark CNM algorithm is applied on the generated virtual network to detect communities. This approach, labelled Similarity-CNM is expected to further maximize the quality of the inferred communities in terms of modularity and detection speed. Our experimental evaluation study asserts these gains, which accuracy is supported by a study based on Normalized Mutual Information Measure to determine how similar are the actual communities in the original network and the ones found by the proposed approach in this paper.
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