基于作者-读者人格特征及其相互作用的说服性论点检测

Michal Shmueli-Scheuer, Jonathan Herzig, D. Konopnicki, T. Sandbank
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引用次数: 9

摘要

说服是人际交往中最常见但也最具挑战性的任务之一。在文本论证中,一方(作者)旨在改变另一方(读者)的观点。在本文中,我们提出在考虑当事人人格特征的同时检测有说服力的文本论点。我们发现,通过引入捕捉作者-读者个性特征及其相互作用的特征,我们可以大大提高准确性。在我们收集的超过19K个参数的新数据集上,我们的模型将最先进的基线性能从66%提高到71%。
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Detecting Persuasive Arguments based on Author-Reader Personality Traits and their Interaction
Persuasion is one of the most frequent, albeit challenging, tasks in human interaction. In a textual argument, one party (author) aims to change the view of the other party (reader). In this paper, we propose to detect persuasive textual arguments while considering the parties personality traits. We find that we can substantially improve accuracy by introducing features that capture author-reader personality traits and their interaction. Our model improves performance of state-of-the-art baselines from 66% to 71% on a new dataset of more than 19K arguments we collected.
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