Improving Evidence Detection by Leveraging Warrants

Keshav Singh, Paul Reisert, Naoya Inoue, Pride Kavumba, Kentaro Inui
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引用次数: 3

Abstract

Recognizing the implicit link between a claim and a piece of evidence (i.e. warrant) is the key to improving the performance of evidence detection. In this work, we explore the effectiveness of automatically extracted warrants for evidence detection. Given a claim and candidate evidence, our proposed method extracts multiple warrants via similarity search from an existing, structured corpus of arguments. We then attentively aggregate the extracted warrants, considering the consistency between the given argument and the acquired warrants. Although a qualitative analysis on the warrants shows that the extraction method needs to be improved, our results indicate that our method can still improve the performance of evidence detection.
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利用搜查令改进证据侦查
认识到请求权与证据(即手令)之间的隐含联系,是提高证据侦查能力的关键。在这项工作中,我们探讨了自动提取权证用于证据检测的有效性。给定索赔和候选证据,我们提出的方法通过相似性搜索从现有的结构化论点语料库中提取多个认股权证。然后,我们仔细汇总提取的权证,考虑给定论点与获得的权证之间的一致性。虽然对权证的定性分析表明提取方法有待改进,但我们的结果表明,我们的方法仍然可以提高证据检测的性能。
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