Using Power-Law Degree Distribution to Accelerate PageRank

Zhaoyan Jin, Quanyuan Wu
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Abstract

The PageRank vector of a network is very important, for it can reflect the importance of a Web page in the World Wide Web, or of a people in a social network. However, with the growth of the World Wide Web and social networks, it needs more and more time to compute the PageRank vector of a network. In many real-world applications, the degree and PageRank distributions of these complex networks conform to the Power-Law distribution. This paper utilizes the degree distribution of a network to initialize its PageRank vector, and presents a Power-Law degree distribution accelerating algorithm of PageRank computation. Experiments on four real-world datasets show that the proposed algorithm converges more quickly than the original PageRank algorithm.
利用幂律度分布加速PageRank
一个网络的PageRank向量是非常重要的,因为它可以反映一个网页在万维网中的重要性,或者一个人在社交网络中的重要性。然而,随着万维网和社交网络的发展,计算一个网络的PageRank向量需要越来越多的时间。在许多实际应用中,这些复杂网络的度和PageRank分布符合幂律分布。利用网络的度分布来初始化其PageRank向量,提出了一种幂律度分布的PageRank计算加速算法。在四个真实数据集上的实验表明,该算法比原有的PageRank算法收敛速度更快。
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