Tri-Rank: An Authority Ranking Framework in Heterogeneous Academic Networks by Mutual Reinforce

Zhirun Liu, Heyan Huang, Xiaochi Wei, Xian-Ling Mao
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引用次数: 26

Abstract

Recently, authority ranking has received increasing interests in both academia and industry, and it is applicable to many problems such as discovering influential nodes and building recommendation systems. Various graph-based ranking approaches like PageRank have been used to rank authors and papers separately in homogeneous networks. In this paper, we take venue information into consideration and propose a novel graph-based ranking framework, Tri-Rank, to co-rank authors, papers and venues simultaneously in heterogeneous networks. This approach is a flexible framework and it ranks authors, papers and venues iteratively in a mutually reinforcing way to achieve a more synthetic, fair ranking result. We conduct extensive experiments using the data collected from ACM Digital Library. The experimental results show that Tri-Rank is more effective and efficient than the state-of-the-art baselines including PageRank, HITS and Co-Rank in ranking authors. The papers and venues ranked by Tri-Rank also demonstrate that Tri-Rank is rational.
三阶:异质学术网络中相互强化的权威排序框架
近年来,权威排序在学术界和业界都受到越来越多的关注,它适用于发现有影响力的节点和构建推荐系统等许多问题。各种基于图表的排名方法,如PageRank,已经被用来在同质网络中分别对作者和论文进行排名。在本文中,我们考虑了场地信息,提出了一种新的基于图的排名框架,Tri-Rank,在异构网络中同时对作者、论文和场地进行排名。这种方法是一个灵活的框架,它以一种相互加强的方式对作者、论文和地点进行迭代排名,以获得更综合、更公平的排名结果。我们使用从ACM数字图书馆收集的数据进行了广泛的实验。实验结果表明,在作者排名方面,Tri-Rank比PageRank、HITS和Co-Rank等最先进的基线更有效。Tri-Rank排名的论文和场所也证明了Tri-Rank的合理性。
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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