首页> 外文会议>33rd annual international ACM SIGIR conference on research and development in information retrieval 2010 >Using Statistical Decision Theory and Relevance Models for Query-Performance Prediction
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Using Statistical Decision Theory and Relevance Models for Query-Performance Prediction

机译:使用统计决策理论和相关性模型进行查询性能预测

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We present a novel framework for the query-performance prediction task. That is, estimating the effectiveness of a search performed in response to a query in lack of relevance judgments. Our approach is based on using statistical decision theory for estimating the utility that a document ranking provides with respect to an information need expressed by the query. To address the uncertainty in inferring the information need, we estimate utility by the expected similarity between the given ranking and those induced by relevance models; the impact of a relevance model is based on its presumed representativeness of the information need. Specific query-performance predictors instantiated from the framework substantially outperform state-of-the-art predictors over five TREC corpora.
机译:我们提出了一种用于查询性能预测任务的新颖框架。即,在缺乏相关性判断的情况下,估计响应于查询而执行的搜索的有效性。我们的方法基于使用统计决策理论来估计文档排名针对查询所表达的信息需求所提供的效用。为了解决推断信息需求时的不确定性,我们通过给定排名与相关性模型得出的相似度来估计效用。相关性模型的影响是基于其对信息需求的假定代表性。从框架中实例化的特定查询性能预测指标在五个TREC语料库上的性能远远优于最新的预测指标。

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