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A Comparative Study on Collecting High-Quality Implicit Reasonings at a Large-scale

2021-04-16 07:03:08
Keshav Singh, Paul Reisert, Naoya Inoue, Kentaro Inui

Abstract

Explicating implicit reasoning (i.e. warrants) in arguments is a long-standing challenge for natural language understanding systems. While recent approaches have focused on explicating warrants via crowdsourcing or expert annotations, the quality of warrants has been questionable due to the extreme complexity and subjectivity of the task. In this paper, we tackle the complex task of warrant explication and devise various methodologies for collecting warrants. We conduct an extensive study with trained experts to evaluate the resulting warrants of each methodology and find that our methodologies allow for high-quality warrants to be collected. We construct a preliminary dataset of 6,000 warrants annotated over 600 arguments for 3 debatable topics. To facilitate research in related downstream tasks, we release our guidelines and preliminary dataset.

Abstract (translated)

URL

https://arxiv.org/abs/2104.07924

PDF

https://arxiv.org/pdf/2104.07924.pdf


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