A Feature-Free Flexible Approach to Topical Classification of Web Queries

Lin Li, Guandong Xu, Zhenglu Yang, Yanchun Zhang, M. Kitsuregawa
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引用次数: 1

Abstract

The task of topical classification of Web queries is to classify Web queries into a set of target categories. Machine learning based conventional approaches usually rely on external sources of information to obtain additional features for Web queries and training data for target categories. Unfortunately, these approaches are known to suffer from inability to adapt to different target categories which may be caused by the dynamic changes observed in both Web topic taxonomy and Web content. In this paper, we propose a feature-free flexible approach to topical classification of Web queries. Our approach analyzes queries and topical categories themselves and utilizes the number of Web pages containing both a query and a category to determine their similarity. The most attractive feature of our approach is that it only utilizes the Web page counts estimated by a search engine to provide the Web query classification with respectable accuracy. We conduct experimental study on the effectiveness of our approach using a set of rank measures and show that our approach performs competitively to some popular state-of-the-art solutions which, however, make frequent use of external sources and are inherently insufficient in flexibility.
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Web查询主题分类的无特征灵活方法
Web查询主题分类的任务是将Web查询分类到一组目标类别中。基于机器学习的传统方法通常依赖于外部信息源来获取Web查询的附加特征和目标类别的训练数据。不幸的是,众所周知,这些方法无法适应不同的目标类别,这可能是由于在Web主题分类法和Web内容中观察到的动态变化造成的。在本文中,我们提出了一种无特征的灵活方法来对Web查询进行主题分类。我们的方法分析查询和主题类别本身,并利用同时包含查询和类别的Web页面的数量来确定它们的相似性。我们的方法最吸引人的特点是,它只利用搜索引擎估计的Web页面数来提供准确度较高的Web查询分类。我们使用一组排名措施对我们方法的有效性进行了实验研究,并表明我们的方法与一些流行的最先进的解决方案相比具有竞争力,然而,这些解决方案经常使用外部资源,并且固有的灵活性不足。
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