Towards Explainable Retrieval Models for Precision Medicine Literature Search

Jiaming Qu, Jaime Arguello, Yue Wang
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引用次数: 7

Abstract

In professional search tasks such as precision medicine literature search, queries often involve multiple aspects. To assess the relevance of a document, a searcher often painstakingly validates each aspect in the query and follows a task-specific logic to make a relevance decision. In such scenarios, we say the searcher makes a structured relevance judgment, as opposed to the traditional univariate (binary or graded) relevance judgment. Ideally, a search engine can support searcher's workflow and follow the same steps to predict document relevance. This approach may not only yield highly effective retrieval models, but also open up opportunities for the model to explain its decision in the same "lingo" as the searcher. Using structured relevance judgment data from the TREC Precision Medicine track, we propose novel retrieval models that emulate how medical experts make structured relevance judgments. Our experiments demonstrate that these simple, explainable models can outperform complex, black-box learning-to-rank models.
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面向精准医学文献检索的可解释检索模型
在精准医学文献检索等专业检索任务中,查询往往涉及多个方面。为了评估文档的相关性,搜索者通常会费力地验证查询中的每个方面,并遵循特定于任务的逻辑来做出相关性决策。在这种情况下,我们说搜索者做出结构化的相关性判断,而不是传统的单变量(二元或分级)相关性判断。理想情况下,搜索引擎可以支持搜索者的工作流程,并遵循相同的步骤来预测文档的相关性。这种方法不仅可以产生高效的检索模型,还可以为模型提供机会,用与搜索者相同的“行话”解释其决策。利用来自TREC精密医学轨道的结构化相关性判断数据,我们提出了新的检索模型,模拟医学专家如何做出结构化相关性判断。我们的实验表明,这些简单的、可解释的模型可以胜过复杂的、黑盒学习排序模型。
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