Querylog-based assessment of retrievability bias in a large newspaper corpus

Myriam C. Traub, Thaer Samar, J. V. Ossenbruggen, Jiyin He, A. D. Vries, L. Hardman
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引用次数: 23

Abstract

Bias in the retrieval of documents can directly influence the information access of a digital library. In the worst case, systematic favoritism for a certain type of document can render other parts of the collection invisible to users. This potential bias can be evaluated by measuring the retrievability for all documents in a collection. Previous evaluations have been performed on TREC collections using simulated query sets. The question remains, however, how representative this approach is of more realistic settings. To address this question, we investigate the effectiveness of the retrievability measure using a large digitized newspaper corpus, featuring two characteristics that distinguishes our experiments from previous studies: (1) compared to TREC collections, our collection contains noise originating from OCR processing, historical spelling and use of language; and (2) instead of simulated queries, the collection comes with real user query logs including click data. First, we assess the retrievability bias imposed on the newspaper collection by different IR models. We assess the retrievability measure and confirm its ability to capture the retrievability bias in our setup. Second, we show how simulated queries differ from real user queries regarding term frequency and prevalence of named entities, and how this affects the retrievability results.
基于查询日志的大型报纸语料库可检索性偏差评估
文献检索中的偏差直接影响到数字图书馆的信息获取。在最坏的情况下,系统地偏爱某种类型的文档可能会使集合的其他部分对用户不可见。这种潜在的偏差可以通过测量集合中所有文档的可检索性来评估。前面的计算是使用模拟查询集对TREC集合执行的。然而,问题仍然是,这种方法在更现实的情况下有多大代表性。为了解决这个问题,我们使用一个大型数字化报纸语料库来研究可检索性措施的有效性,该实验具有与以往研究不同的两个特征:(1)与TREC集合相比,我们的集合包含来自OCR处理、历史拼写和语言使用的噪声;(2)该集合不是模拟查询,而是包含点击数据的真实用户查询日志。首先,我们评估了不同IR模型对报纸馆藏的可检索性偏差。在我们的设置中,我们评估了可检索性测量并确认其捕获可检索性偏差的能力。其次,我们将展示在术语频率和命名实体的流行度方面,模拟查询与真实用户查询有何不同,以及这如何影响可检索性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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