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Finding Generalizable Evidence by Learning to Convince QA Models

机译:通过说服问答模型找到通用证据

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摘要

We propose a system that finds the strongest supporting evidence for a given answer to a question, using passage-based question-answering (QA) as a testbed. We train evidence agents to select the passage sentences that most convince a pretrained QA model of a given answer, if the QA model received those sentences instead of the full passage. Rather than finding evidence that convinces one model alone, we find that agents select evidence that generalizes; agent-chosen evidence increases the plausibility of the supported answer, as judged by other QA models and humans. Given its general nature, this approach improves QA in a robust manner, using agent-selected evidence (ⅰ) humans can correctly answer questions with only ~20% of the full passage and (ⅱ) QA models can generalize to longer passages and harder questions.
机译:我们提出了一种系统,该系统使用基于段落的问题解答(QA)作为测试平台,可以找到针对给定问题答案的最有力的支持证据。如果QA模型收到的是这些句子而不是完整的句子,我们会训练证据代理人选择最能说服预先训练的QA模型回答给定答案的句子。我们发现代理商选择的是泛泛的证据,而不是找到仅能说服一种模型的证据。根据其他QA模型和人员的判断,由代理人选择的证据增加了所支持答案的合理性。考虑到它的一般性,这种方法可以通过使用代理选择的证据以健壮的方式改善质量保证(ⅰ)人类只能正确地回答全篇文章的约20%的问题,并且(ⅱ)QA模型可以推广到更长的篇章和更难的问题。

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