Despite extensive research efforts in recent years, computational argumentation (CA) remains one of the most challenging areas of natural language processing. The reason for this is the inherent complexity of the cognitive processes behind human argumentation, which integrate a plethora of different types of knowledge, ranging from topic-specific facts and common sense to rhetorical knowledge. The integration of knowledge from such a wide range in CA requires modeling capabilities far beyond many other natural language understanding tasks. Existing research on mining, assessing, reasoning over, and generating arguments largely acknowledges that much more knowledge is needed to accurately model argumentation computationally. However, a systematic overview of the types of knowledge introduced in existing CA models is missing, hindering targeted progress in the field. Adopting the operational definition of knowledge as any task-relevant normative information not provided as input, the survey paper at hand fills this gap by (1) proposing a taxonomy of types of knowledge required in CA tasks, (2) systematizing the large body of CA work according to the reliance on and exploitation of these knowledge types for the four main research areas in CA, and (3) outlining and discussing directions for future research efforts in CA.
翻译:尽管近年来进行了广泛的研究,但计算论证(CA)仍然是自然语言处理中最具挑战性的领域之一,其原因是,人类论证背后的认知过程具有内在的复杂性,它综合了从专题特定事实和常识到口头知识的多种不同类型的知识,从专题特定事实和常识到口头知识。将来自CA中如此广泛的知识综合起来,需要建模能力远远超过许多其他自然语言理解任务。关于采矿的现有研究、评估、推理和提出论据在很大程度上承认需要更多知识才能准确进行模拟论证计算。然而,对现有的CA模型中引入的知识类型缺乏系统化的概览,阻碍了实地有针对性的进展。将知识的实际定义作为任何与任务相关的、没有作为投入的规范性信息加以采用,这份手头调查文件填补了这一空白,即:(1) 提出CA任务所需知识种类的分类,(2) 根据对CA的四个主要研究领域的依赖和利用这些知识类型,系统化大量CA工作。(3) 概述和讨论未来CAAA研究工作的方向。