Page-reRank: using trusted links to re-rank authority

P. Massa, Conor Hayes
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引用次数: 64

Abstract

Search engines like Google.com use the link structure of the Web to determine whether Web pages are authoritative sources of information. However, the linking mechanism provided by HTML does not allow the Web author to express different types of links, such as positive or negative endorsements of page content. As a consequence, search engine algorithms cannot discriminate between sites that are highly linked and sites that are highly trusted. We demonstrate our claim by running PageRank on a real world data set containing positive and negative links. We conclude that simple semantic extensions to the link mechanism would provide a richer semantic network from which to mine more precise Web intelligence.
Page-reRank:使用可信链接对权限进行重新排序
像Google.com这样的搜索引擎使用网络的链接结构来确定网页是否是权威的信息来源。但是,HTML提供的链接机制不允许Web作者表达不同类型的链接,例如对页面内容的正面或负面认可。因此,搜索引擎算法无法区分高链接的网站和高信任的网站。我们通过在包含积极和消极链接的真实世界数据集上运行PageRank来证明我们的主张。我们得出结论,链接机制的简单语义扩展将提供更丰富的语义网络,从中可以挖掘更精确的Web智能。
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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