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A rank fusion approach based on score distributions for prioritizing relevance assessments in information retrieval evaluation

机译:基于评分分布的秩融合方法,以确定信息检索评估中的相关性评估

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摘要

In this paper we study how to prioritize relevance assessments in the process of creating an Information Retrieval test collection. A test collection consists of a set of queries, a document collection, and a set of relevance assessments. For each query, only a sample of documents from the collection can be manually assessed for relevance. Multiple retrieval strategies are typically used to obtain such sample of documents. And rank fusion plays a fundamental role in creating the sample by combining multiple search results. We propose effective rank fusion models that are adapted to the characteristics of this evaluation task. Our models are based on the distribution of retrieval scores supplied by the search systems and our experiments show that this formal approach leads to natural and competitive solutions when compared to state of the art methods. We also demonstrate the benefits of including pseudo-relevance evidence into the estimation of the score distribution models. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,我们研究如何在创建信息检索测试收集过程中优先考虑相关性评估。测试集由一组查询,文档集合和一组相关性评估组成。对于每个查询,只能手动评估集合中的文件样本以进行相关性。多种检索策略通常用于获得此类文件样本。并且排名融合在通过组合多个搜索结果来创建样本方面发挥着基本作用。我们提出了有效的等级融合模型,适应了该评估任务的特征。我们的模型基于搜索系统提供的检索分数的分布,我们的实验表明,与现有技术的状态相比,这种正式的方法会导致自然和竞争的解决方案。我们还展示了包括伪相关性证据进入得分分配模型的估计的益处。 (c)2017 Elsevier B.v.保留所有权利。

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