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Automatic ranking of information retrieval systems using data fusion

机译:使用数据融合对信息检索系统进行自动排名

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摘要

Measuring effectiveness of information retrieval (IR) systems is essential for research and development and for monitoring search quality in dynamic environments. In this study, we employ new methods for automatic ranking of retrieval systems. In these methods, we merge the retrieval results of multiple systems using various data fusion algorithms, use the top-ranked documents in the merged result as the "(pseudo) relevant documents," and employ these documents to evaluate and rank the systems. Experiments using Text REtrieval Conference (TREC) data provide statistically significant strong correlations with human-based assessments of the same systems. We hypothesize that the selection of systems that would return documents different from the majority could eliminate the ordinary systems from data fusion and provide better discrimination among the documents and systems. This could improve the effectiveness of automatic ranking. Based on this intuition, we introduce a new method for the selection of systems to be used for data fusion. For this purpose, we use the bias concept that measures the deviation of a system from the norm or majority and employ the systems with higher bias in the data fusion process. This approach provides even higher correlations with the human-based results. We demonstrate that our approach outperforms the previously proposed automatic ranking methods.
机译:衡量信息检索(IR)系统的有效性对于研发和监视动态环境中的搜索质量至关重要。在这项研究中,我们采用新方法对检索系统进行自动排名。在这些方法中,我们使用各种数据融合算法合并多个系统的检索结果,将合并结果中排名最高的文档用作“(伪)相关文档”,然后使用这些文档评估系统并对其进行排名。使用文本检索会议(TREC)数据进行的实验与基于人为的同一系统评估提供了具有统计意义的强相关性。我们假设选择将返回不同于大多数文档的系统可以从数据融合中消除普通系统,并更好地区分文档和系统。这可以提高自动排名的有效性。基于这种直觉,我们介绍了一种用于数据融合的系统选择的新方法。为此,我们使用偏差概念来度量系统与标准或多数的偏差,并在数据融合过程中采用偏差较大的系统。这种方法提供了与基于人类的结果更高的相关性。我们证明了我们的方法优于以前提出的自动排名方法。

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