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A k-Nearest-Neighbour Method for Classifying Web Search Results with Data in Folksonomies

机译:用于对Web搜索结果进行分类的k-cirectend-neibeld方法,使用obksonomies中的数据

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Traditional Web search engines mostly adopt a keyword-based approach. When the keyword submitted by the user is ambiguous, search result usually consists of documents related to various meanings of the keyword, while the user is probably interested in only one of them. In this paper we attempt to provide a solution to this problem using a k-nearest-neighbour approach to classify documents returned by a search engine, by building classifiers using data collected from collaborative tagging systems. Experiments on search results returned by Google show that our method is able to classify the documents returned with high precision.
机译:传统的Web搜索引擎主要采用基于关键字的方法。当用户提交的关键字是模糊的时,搜索结果通常由与关键字的各种含义相关的文档组成,而用户可能对其中一个人感兴趣。在本文中,我们尝试使用K-CircleS邻近的方法提供对该问题的解决方案来通过从协同标记系统收集的数据构建分类器来对搜索引擎返回的文档来分类。谷歌返回的搜索结果实验表明我们的方法能够将文档分类为高精度。

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