Modeling Exemplification in Long-form Question Answering via Retrieval

Shufan Wang, Fangyuan Xu, Laure Thompson, Eunsol Choi, Mohit Iyyer
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引用次数: 6

Abstract

Exemplification is a process by which writers explain or clarify a concept by providing an example. While common in all forms of writing, exemplification is particularly useful in the task of long-form question answering (LFQA), where a complicated answer can be made more understandable through simple examples. In this paper, we provide the first computational study of exemplification in QA, performing a fine-grained annotation of different types of examples (e.g., hypotheticals, anecdotes) in three corpora. We show that not only do state-of-the-art LFQA models struggle to generate relevant examples, but also that standard evaluation metrics such as ROUGE are insufficient to judge exemplification quality. We propose to treat exemplification as a retrieval problem in which a partially-written answer is used to query a large set of human-written examples extracted from a corpus. Our approach allows a reliable ranking-type automatic metrics that correlates well with human evaluation. A human evaluation shows that our model’s retrieved examples are more relevant than examples generated from a state-of-the-art LFQA model.
基于检索的长格式问答建模例证
举例是作者通过举例来解释或阐明一个概念的过程。举例法在所有写作形式中都很常见,但在长篇问答(LFQA)任务中尤其有用,因为通过简单的例子可以使复杂的答案更容易理解。在本文中,我们提供了QA中例证的第一个计算研究,在三个语料库中对不同类型的示例(例如,假设,轶事)进行细粒度注释。我们表明,不仅最先进的LFQA模型难以生成相关的示例,而且标准的评估指标(如ROUGE)不足以判断示例质量。我们建议将例证视为一个检索问题,其中使用部分书面答案来查询从语料库中提取的大量人工编写的示例。我们的方法允许一个可靠的排名类型的自动指标,与人类的评估很好地相关。人工评估表明,我们的模型检索的示例比最先进的LFQA模型生成的示例更相关。
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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