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Effectiveness of search result classification based on relevance feedback

机译:基于相关性反馈的搜索结果分类的有效性

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Relevance feedback (RF) has been studied under laboratory conditions using test collections and either test persons or simple simulation. These studies have given mixed results. Automatic (or pseudo) RF and intellectual RF, both leading to query reformulation, are the main approaches to explicit RF. In the present study we perform RF with the help of classification of search results. We conduct our experiments in a comprehensive collection, namely various TREC ad-hoc collections with 250 topics. We also studied various term space reduction techniques for the classification process. The research questions are: given RF on top results of pseudo RF (PRF) query results, is it possible to learn effective classifiers for the following results? What is the effectiveness of various classification methods? Our findings indicate that this approach of applying RF is significantly more effective than PRF with short (title) queries and long (title and description) queries.
机译:相关性反馈(RF)已在实验室条件下使用测试集和测试人员或简单的模拟进行了研究。这些研究给出了不同的结果。自动(或伪)RF和智能RF均导致查询重新形成,是显式RF的主要方法。在本研究中,我们借助搜索结果分类来执行RF。我们在一个综合性的收藏中进行实验,即包含250个主题的各种TREC临时收藏。我们还研究了用于分类过程的各种术语空间缩减技术。研究的问题是:如果在伪射频(PRF)查询结果的顶部结果上给出RF,是否有可能为以下结果学习有效的分类器?各种分类方法的功效是什么?我们的研究结果表明,使用RF的这种方法比使用简短(标题)查询和较长(标题和描述)查询的PRF更有效。

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