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Decomposing Consumer Health Questions

机译:分解消费者健康问题

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摘要

This paper presents a method for decomposing long, complex consumer health questions. Our approach largely decomposes questions using their syntactic structure, recognizing independent questions embedded in clauses, as well as coordinations and exemplifying phrases. Additionally, we identify elements specific to disease-related consumer health questions, such as the focus disease and background information. To achieve this, our approach combines rank-and-filter machine learning methods with rule-based methods. Our results demonstrate significant improvements over the heuristic methods typically employed for question decomposition mat rely only on the syntactic parse tree.
机译:本文提出了一种分解长期,复杂的消费者健康问题的方法。我们的方法主要通过句法结构分解问题,识别嵌入在从句中的独立问题,以及协调和示例性短语。此外,我们确定了与疾病相关的消费者健康问题的特定元素,例如重点疾病和背景信息。为了实现这一目标,我们的方法将秩和筛选器机器学习方法与基于规则的方法相结合。我们的结果表明,相对于仅用于语法分析树的问题分解通常使用的启发式方法,该方法具有显着的改进。

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