现实世界网络中基于链路的相似度计算的高效算法

Yuanzhe Cai, G. Cong, Xu Jia, Hongyan Liu, Jun He, Jiaheng Lu, Xiaoyong Du
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引用次数: 22

摘要

相似度计算有许多应用,例如信息检索和协同过滤等。研究表明,基于链接的相似性度量,如simmrank,通过利用对象对对象的关系,可以非常有效地表征网络(如Web)中对象的相似性。不幸的是,在一个相对较大的图中计算基于链接的相似性是非常昂贵的。本文在观察到真实世界图的基于链接的相似度分数服从幂律分布的基础上,提出了一种新的近似算法power- simmrank,该算法具有保证的误差界,可以有效地计算基于链接的相似度度量。并证明了算法的收敛性。在真实世界数据集和合成数据集上进行的大量实验表明,该算法在效率方面优于simmrank 4 - 5倍,而近似产生的误差很小。
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Efficient Algorithm for Computing Link-Based Similarity in Real World Networks
Similarity calculation has many applications, such as information retrieval, and collaborative filtering, among many others. It has been shown that link-based similarity measure, such as SimRank, is very effective in characterizing the object similarities in networks, such as the Web, by exploiting the object-to-object relationship. Unfortunately, it is prohibitively expensive to compute the link-based similarity in a relatively large graph. In this paper, based on the observation that link-based similarity scores of real world graphs follow the power-law distribution, we propose a new approximate algorithm, namely Power-SimRank, with guaranteed error bound to efficiently compute link-based similarity measure. We also prove the convergence of the proposed algorithm. Extensive experiments conducted on real world datasets and synthetic datasets show that the proposed algorithm outperforms SimRank by four-five times in terms of efficiency while the error generated by the approximation is small.
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