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Re-ranking Google search returned web documents using document classification scores

机译:使用文档分类分数重新排名谷歌搜索返回的Web文档

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摘要

Web document ranking is a very challenging issue for search engines because about 80% of the search engine users are usually interested in the top three returned search results only. This paper proposes an effective method for re-ranking Google search returned web documents/pages based on document classification. This method downgrades some web documents/pages that have lower classification scores or been classified into categories irrelevant to the query. The experimental results show that the re-ranking of Google search returned web documents using document classification scores can significantly improve the ranking performance in terms of the integrated evaluation result using three criteria: MAP, nDCG, and P@20. It is evident that the proposed re-ranking method can meet the user's information need better.
机译:Web文档排名是搜索引擎的一个非常具有挑战性的问题,因为大约80%的搜索引擎用户通常只对前三个返回的搜索结果感兴趣。 本文提出了一种基于文档分类重新排名Google搜索返回的Web文档/页面的有效方法。 此方法将某些Web文档/页面降低了具有较低分类分数的网页或分类为与查询无关的类别。 实验结果表明,使用文档分类评分的Google搜索返回的Web文档的重新排序可以在使用三个标准:MAP,NDCG和P @ 20的综合评估结果方面显着提高排名性能。 显然,所提出的重新排名方法可以满足用户的信息更好。

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