CrashSim:一个在静态和时间图上计算simmrank的有效算法

Mo Li, F. Choudhury, Renata Borovica-Gajic, Zhiqiong Wang, Junchang Xin, Jianxin Li
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引用次数: 5

摘要

simmrank是图数据分析中衡量节点相似性的重要指标。simmrank计算问题已经得到了广泛的研究,但目前还没有一种统一的算法来支持静态图和时态图上的simmrank计算。在这项工作中,我们首先提出了CrashSim,一种无索引的算法,用于静态图中的单源simmrank计算。CrashSim可以有效地为计算结果提供可证明的近似保证。此外,由于现实生活中的图形通常表示为时间图,因此CrashSim可以在时间图中高效地计算simmrank。我们在时间图中正式定义了两个典型的SimRank查询,然后通过开发一种基于CrashSim的高效算法(称为CrashSim- t)来解决它们。通过使用5个真实数据集和合成数据集进行广泛的实验评估,可以看出,CrashSim算法和CrashSim- t算法将目前最先进的simmrank算法的效率大幅提高了约30%,同时实现了约97%的结果集精度。
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CrashSim: An Efficient Algorithm for Computing SimRank over Static and Temporal Graphs
SimRank is a significant metric to measure the similarity of nodes in graph data analysis. The problem of SimRank computation has been studied extensively, however there is no existing work that can provide one unified algorithm to support the SimRank computation both on static and temporal graphs. In this work, we first propose CrashSim, an index-free algorithm for single-source SimRank computation in static graphs. CrashSim can provide provable approximation guarantees for the computational results in an efficient way. In addition, as the reallife graphs are often represented as temporal graphs, CrashSim enables efficient computation of SimRank in temporal graphs. We formally define two typical SimRank queries in temporal graphs, and then solve them by developing an efficient algorithm based on CrashSim, called CrashSim-T. From the extensive experimental evaluation using five real-life and synthetic datasets, it can be seen that the CrashSim algorithm and CrashSim-T algorithm substantially improve the efficiency of the state-of-the-art SimRank algorithms by about 30%, while achieving the precision of the result set with about 97%.
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