DIGRank: using global degree to facilitate ranking in an incomplete graph

Xiang Niu, Lusong Li, Ke Xu
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引用次数: 3

Abstract

PageRank has been broadly applied to get credible rank sequences of nodes in many networks such as the web, citation networks, or online social networks. However, in the real world, it is usually hard to ascertain a complete structure of a network, particularly a large-scale one. Some researchers have begun to explore how to get a relatively accurate rank more efficiently. They have proposed some local approximation methods, which are especially designed for quickly estimating the PageRank value of a new node, after it is just added to the network. Yet, these local approximation methods rely on the link server too much, and it is difficult to use them to estimate rank sequences of nodes in a group. So we propose a new method called DIGRank, which uses global Degree to facilitate Ranking in an Incomplete Graph and which takes into account the frequent need for applications to rank users in a community, retrieve pages in a particular area, or mine nodes in a fractional or limited network. Based on experiments in small-world and scale-free networks generated by models, the DIGRank method performs better than other local estimation methods on ranking nodes in a given subgraph. In the models, it tends to perform best in graphs that have low average shortest path length, high average degree, or weak community structure. Besides, compared with an local PageRank and an advanced local approximation method, it significantly reduces the computational cost and error rate.
DIGRank:使用全局度在不完全图中进行排序
在web、引文网络、在线社交网络等众多网络中,PageRank被广泛应用于获取可信的节点排名序列。然而,在现实世界中,通常很难确定网络的完整结构,特别是大型网络。一些研究人员已经开始探索如何更有效地获得相对准确的排名。他们提出了一些局部近似方法,这些方法专门用于快速估计新节点加入网络后的PageRank值。然而,这些局部逼近方法过于依赖于链路服务器,很难用它们来估计组中节点的秩序列。因此,我们提出了一种称为DIGRank的新方法,它使用全局度来促进在不完全图中的排名,并考虑到应用程序对社区用户排名的频繁需求,检索特定区域的页面,或在分数或有限网络中挖掘节点。在模型生成的小世界和无标度网络中进行的实验表明,DIGRank方法在给定子图中的节点排序方面优于其他局部估计方法。在模型中,它往往在平均最短路径长度较小、平均度较高或群落结构较弱的图中表现最好。此外,与局部PageRank和一种先进的局部逼近方法相比,该方法显著降低了计算成本和错误率。
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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