Evaluation repeated random walks in community detection of social networks

Bingjing Cai, Haiying Wang, Huiru Zheng, Hui Wang
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引用次数: 20

Abstract

The repeated random walks algorithm (RRW) is a graph clustering algorithm proposed recently. RRW has been shown to achieve better performance on functional module discovery in protein-protein interaction networks than Markov Clustering Algorithm (MCL). There is however little work applying RRW to community detection in social networks. We ran RRW on some real-world social networks that are well-documented in the literature. We then analyzed the impact of different parameters on the quality of clustering, by using a set of cluster metrics. We also compared RRW with two other random walk based graph clustering algorithms. Our experiments showed that the RRW algorithm achieved higher precision but lower modularity. The experiments also revealed some weaknesses of the RRW algorithm, such as higher running cost, and “discarding nodes” method in its post-process stage, which greatly affects the quality of clustering.
评价重复随机漫步在社会网络社区检测中的应用
重复随机行走算法(RRW)是近年来提出的一种图聚类算法。RRW已被证明在蛋白质-蛋白质相互作用网络中的功能模块发现方面比马尔可夫聚类算法(MCL)有更好的性能。然而,将RRW应用于社交网络中的社区检测的工作很少。我们在一些真实世界的社交网络上运行了RRW,这些社交网络在文献中有很好的记录。然后,我们通过使用一组聚类度量来分析不同参数对聚类质量的影响。我们还将RRW与另外两种基于随机行走的图聚类算法进行了比较。实验表明,该算法具有较高的精度和较低的模块化。实验也揭示了RRW算法运行成本较高、后处理阶段采用“丢弃节点”方法等缺点,极大地影响了聚类质量。
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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