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A Luhn-Inspired Vector Re-weighting Approach for Improving Personalized Web Search

机译:卢恩(Luhn)启发的向量重加权方法,用于改善个性化Web搜索

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A fundamental problem with current Web search technology is that in the absence of any additional information, the same query provided by two different searchers will produce the same set of search results, even if the information needs of the searchers are different. Web search personalization has been proposed as a solution to this problem, whereby the interests and preferences of individual users are modelled and used to affect the outcomes of their subsequent searches. A common approach is to generate vector-based models of searchers' interests, and re-rank the search results based on the similarity of the documents to these models. In this paper, a novel approach is proposed to automatically identify and re-weight significant dimensions in vector-based models in order to improve the personalized order of Web search results. This approach is inspired by Luhn's model of term importance, which is rooted in Zipf's Laws. Evaluations with a set of ambiguous queries illustrate the effectiveness of this approach.
机译:当前的Web搜索技术的一个基本问题是,在没有任何附加信息的情况下,即使两个搜索者的信息需求不同,由两个不同的搜索者提供的相同查询也会产生相同的搜索结果集。已经提出了将网络搜索个性化作为该问题的解决方案,由此对单个用户的兴趣和偏好进行建模并用于影响其后续搜索的结果。一种常见的方法是生成基于矢量的搜索者兴趣模型,然后根据文档与这些模型的相似性对搜索结果进行重新排名。在本文中,提出了一种新颖的方法来自动识别和重新加权基于矢量的模型中的重要维度,以改善Web搜索结果的个性化顺序。这种方法的灵感源于鲁恩的术语重要性模型,该模型植根于齐普夫定律。一组模糊查询的评估说明了这种方法的有效性。

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