以源为中心协作的基于链接的Web排名

James Caverlee, Ling Liu, W. Rouse
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引用次数: 8

摘要

Web排名是最成功和最广泛使用的协作计算应用程序之一,其中Web页面以不同程度的关系的形式进行协作,以评估其相对质量。尽管许多人观察到链接显示了很强的以源为中心的局部性,例如,就管理域和主机而言,但迄今为止大多数Web排名分析都集中在平面页面级Web链接结构上。本文利用强Web链接结构,开发了一个基于链接的Web协同排名框架。我们认为这种以源为中心的链接分析很有前途,因为它捕获了Web的自然链接位置结构,可以提供更吸引人、更有效的Web应用程序,并反映了许多自然类型的结构化人类协作。具体来说,我们提出了一个以资源为中心的Web协同排序的通用框架。本文有两个独特的贡献。首先,我们对一组可能影响以源为中心的链接分析的关键参数进行了严格的研究,例如源大小、自链接的存在以及不同的源引用链接加权方案(例如,一致性、链接数、源共识)。其次,我们进行了大规模的实验研究,以了解不同参数设置如何影响Web排名的时间复杂性,稳定性和垃圾邮件弹性。我们发现,仔细调整这些参数对于确保每个目标的成功以及平衡所有目标之间的性能至关重要
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Link-Based Ranking of the Web with Source-Centric Collaboration
Web ranking is one of the most successful and widely used collaborative computing applications, in which Web pages collaborate in the form of varying degree of relationships to assess their relative quality. Though many observe that links display strong source-centric locality, for example, in terms of administrative domains and hosts, most Web ranking analysis to date has focused on the flat page-level Web linkage structure. In this paper we develop a framework for link-based collaborative ranking of the Web by utilizing the strong Web link structure. We argue that this source-centric link analysis is promising since it captures the natural link-locality structure of the Web, can provide more appealing and efficient Web applications, and reflects many natural types of structured human collaborations. Concretely, we propose a generic framework for source-centric collaborative ranking of the Web. This paper makes two unique contributions. First, we provide a rigorous study of the set of critical parameters that can impact source-centric link analysis, such as source size, the presence of self-links, and different source-citation link weighting schemes (e.g., uniform, link count, source consensus). Second, we conduct a large-scale experimental study to understand how different parameter settings may impact the time complexity, stability, and spam-resilience of Web ranking. We find that careful tuning of these parameters is vital to ensure success over each objective and to balance the performance across all objectives
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