首页> 外文会议>Australian Joint Conference on Artificial Intelligence; 20041204-06; Cairns(AU) >Analyzing the Effect of Query Class on Document Retrieval Performance
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Analyzing the Effect of Query Class on Document Retrieval Performance

机译:分析查询类对文档检索性能的影响

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Analysis of queries posed to open-domain question-answering systems indicates that particular types of queries are dominant, e.g., queries about the identity of people, and about the location or time of events. We applied a rule-based mechanism and performed manual classification to classify queries into such commonly occurring types. We then experimented with different adjustments to our basic document retrieval process for each query type. The application of the best retrieval adjustment for each query type yielded improvements in retrieval performance. Finally, we applied a machine learning technique to automatically learn the manually classified query types, and applied the best retrieval adjustments obtained for the manual classification to the automatically learned query classes. The learning algorithm exhibited high accuracy, and the retrieval performance obtained for the learned classes was consistent with the performance obtained for the rule-based and manual classifications.
机译:对置于开放域问答系统中的查询的分析表明,特定类型的查询占主导地位,例如,有关人的身份以及事件的位置或时间的查询。我们应用了基于规则的机制并执行了手动分类,以将查询分类为此类常见类型。然后,我们针对每种查询类型对基本文档检索过程进行了不同的调整。每种查询类型的最佳检索调整的应用都提高了检索性能。最后,我们应用了机器学习技术来自动学习手动分类的查询类型,并将针对手动分类获得的最佳检索调整应用于自动学习的查询类。该学习算法具有很高的准确性,并且针对学习的类所获得的检索性能与基于规则和手动分类所获得的性能是一致的。

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