查询样本选择偏差对信息检索系统排序的影响

M. Melucci
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引用次数: 7

摘要

信息检索(IR)有效性度量通常假设实验查询集由随机抽取的查询组成,这些查询代表提交给IR系统的查询的总体。然而,在许多实际情况下,这种假设是违反的,这是一个被称为样本选择偏差的问题。因此,参与评估活动的系统是由有偏见的有效性估计者进行排名的。在本文中,我们解决了机器学习术语中的查询样本选择偏差问题,并实验研究了它是如何影响检索系统排名的。为此,我们应用了一些有用的检索有效性度量和查询概率估计方法来纠正样本选择偏差。我们报告了最有效系统和最不有效系统的排名受到查询样本选择偏差的影响,而平均系统的排名受到更大的影响。我们还报告了偏差的度量取决于用于对系统进行排序的检索度量,并最终取决于正在评估的搜索任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Query Sample Selection Bias on Information Retrieval System Ranking
Information Retrieval (IR) effectiveness measures commonly assume that the experimental query sets consist of randomly drawn queries that represent the population of queries submitted to IR systems. In many practical situations, however, this assumption is violated, in a problem known as sample selection bias. It follows that the systems participating in evaluation campaigns are ranked by biased estimators of effectiveness. In this paper, we address the problem of query sample selection bias in machine learning terms and study experimentally how retrieval system rankings are affected by it. To this end, we apply a number of retrieval effectiveness measures and query probability estimation methods useful to correct sample selection bias. We report that the ranking of the most effective systems and that of the least effective systems is fairly affected by query sample selection bias, while the ranking of the average systems is much more affected. We also report that the measure of bias depends on the retrieval measure used to rank systems and eventually on the search task being evaluated.
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