Link prediction in social networks using hierarchical community detection

Hasti Akbari Deylami, M. Asadpour
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引用次数: 12

Abstract

Social network analysis is an approach to the study of social structures. One of the important fields in social networks analyses is link prediction. Link prediction tries to reach an appropriate answer to this question: what kinds of interaction among members of a network would possible form in future, given a snapshot of the network in current time. The main purpose of this paper is to boost the performance of similarity based link prediction methods by using community information. This information is derived from the structure of the graph, based on the number of community levels that two vertices have in common, in a hierarchical representation of communities. To evaluate the performance of the proposed method, four datasets are used as benchmark. The results suggest that the information of communities often increases the efficiency and accuracy of link prediction.
基于层次社区检测的社交网络链接预测
社会网络分析是研究社会结构的一种方法。链接预测是社交网络分析的一个重要领域。链接预测试图对这个问题给出一个适当的答案:给定当前网络的快照,网络成员之间未来可能形成什么样的交互。本文的主要目的是利用社区信息来提高基于相似性的链接预测方法的性能。该信息来源于图的结构,基于两个顶点共有的社区级别的数量,在社区的分层表示中。为了评估该方法的性能,使用了四个数据集作为基准。结果表明,社区信息往往能提高链接预测的效率和准确性。
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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