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Using Hyperlink Features to Personalize Web Search

机译:使用超链接功能个性化Web搜索

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摘要

Personalized search has gained great popularity to improve search effectiveness in recent years. The objective of personalized search is to provide users with information tailored to their individual contexts. We propose to personalize Web search based on features extracted from hyperlinks, such as anchor terms or URL tokens. Our methodology personalizes PageRank vectors by weighting links based on the match between hyperlinks and user profiles. In particular, here we describe a profile representation using Internet domain features extracted from URLs. Users specify interest profiles as binary vectors where each feature corresponds to a set of one or more DNS tree nodes. Given a profile vector, a weighted PageRank is computed assigning a weight to each URL based on the match between the URL and the profile. We present promising results from an experiment in which users were allowed to select among nine URL features combining the top two levels of the DNS tree, leading to 2~9 pre-computed PageRank vectors from a Yahoo crawl. Personalized PageRank performed favorably compared to pure similarity based ranking and traditional PageRank.
机译:近年来,个性化搜索已得到广泛普及,以提高搜索效率。个性化搜索的目的是为用户提供适合其个人情况的信息。我们建议根据从超链接中提取的功能(例如定位词或URL令牌)来个性化Web搜索。我们的方法通过根据超链接和用户个人资料之间的匹配对链接进行加权来个性化PageRank向量。特别是在这里,我们使用从URL提取的Internet域功能描述配置文件表示。用户将兴趣配置文件指定为二进制矢量,其中每个功能对应于一组一个或多个DNS树节点。给定一个配置文件矢量,将根据URL和配置文件之间的匹配,为每个URL分配一个权重,以计算加权的PageRank。我们提供了一项实验的有希望的结果,该实验允许用户在9个URL功能中进行选择,这些功能结合了DNS树的前两个级别,从而从Yahoo抓取中生成2〜9个预先计算的PageRank向量。与基于纯相似度的排名和传统PageRank相比,个性化PageRank表现出色。

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