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Learning From Revisions: Quality Assessment of Claims in Argumentation at Scale

机译:从修订中学习:尺度论证中索赔的质量评估

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Assessing the quality of arguments and of the claims the arguments are composed of has become a key task in computational argumentation. However, even if different claims share the same stance on the same topic, their assessment depends on the prior perception and weighting of the different aspects of the topic being discussed. This renders it difficult to learn topic-independent quality indicators. In this paper, we study claim quality assessment irrespective of discussed aspects by comparing different revisions of the same claim. We compile a large-scale corpus with over 377k claim revision pairs of various types from kialo.com, covering diverse topics from politics, ethics, entertainment, and others. We then propose two tasks: (a) assessing which claim of a revision pair is better, and (b) ranking all versions of a claim by quality. Our first experiments with embedding-based logistic regression and transformer-based neural networks show promising results, suggesting that learned indicators generalize well across topics. In a detailed error analysis, we give insights into what quality dimensions of claims can be assessed reliably. We provide the data and scripts needed to reproduce all results.
机译:评估参数和索赔的质量,参数由已成为计算论证中的关键任务。但是,即使不同的索赔在同一主题中共享相同的立场,它们的评估也取决于正在讨论主题的不同方面的先前感知和加权。这使得难以学习独立的质量指标。在本文中,我们通过比较同一索赔的不同修订来研究索赔质量评估。我们编制了一个大规模的语料库,具有超过377k的索赔修订版对Kialo.com的各种类型,涵盖了政治,道德,娱乐等各种主题。然后,我们提出了两个任务:(a)评估哪种修订对的索赔更好,(b)按质量排列索赔的所有版本。我们对基于嵌入的逻辑回归和基于变压器的神经网络的第一个实验表明了有希望的结果,这表明学习指标贯穿课题良好。在一个详细的错误分析中,我们可以在可以可靠地评估权利要求的质量方面的见解。我们提供重现所有结果所需的数据和脚本。

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