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Inferring Query Performance Using Pre-retrieval Predictors

机译:使用检索前预测变量推断查询性能

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摘要

The prediction of query performance is an interesting and important issue in Information Retrieval (IR). Current predictors involve the use of relevance scores, which are time-consuming to compute. Therefore, current predictors are not very suitable for practical applications. In this paper, we study a set of predictors of query performance, which can be generated prior to the retrieval process. The linear and non-parametric correlations of the predictors with query performance axe thoroughly assessed on the TREC disk4 and disk5 (minus CR) collections. According to the results, some of the proposed predictors have significant correlation with query performance, showing that these predictors can be useful to infer query performance in practical applications.
机译:查询性能的预测是信息检索(IR)中一个有趣且重要的问题。当前的预测变量涉及相关性分数的使用,相关性分数的计算非常耗时。因此,当前的预测器不太适合实际应用。在本文中,我们研究了一组查询性能的预测变量,这些预测变量可以在检索过程之前生成。在TREC disk4和disk5(减去CR)集合上,彻底评估了预测变量与查询性能的线性和非参数相关性。根据结果​​,一些提出的预测变量与查询性能具有显着的相关性,表明这些预测变量在实际应用中可用于推断查询性能。

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