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Machine-Aided Annotation for Fine-Grained Proposition Types in Argumentation

机译:机器辅助注释论证中细粒度的命题类型

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We introduce a corpus of the 2016 U.S. presidential debates and commentary, containing 4,648 argumentative propositions annotated with fine-grained proposition types. Modem machine learning pipelines for analyzing argument have difficulty distinguishing between types of propositions based on their factuality, rhetorical positioning, and speaker commitment. Inability to properly account for these facets leaves such systems inaccurate in understanding of fine-grained proposition types. In this paper, we demonstrate an approach to annotating for four complex proposition types, namely normative claims, desires, future possibility, and reported speech. We develop a hybrid machine learning and human workflow for annotation that allows for efficient and reliable annotation of complex linguistic phenomena, and demonstrate with preliminary analysis of rhetorical strategies and structure in presidential debates. This new dataset and method can support technical researchers seeking more nuanced representations of argument, as well as argumentation theorists developing new quantitative analyses.
机译:我们介绍了2016年美国总统辩论和评论的有条件,其中包含了4,648名论证命题,用细粒度的命题类型注释。调制解调器机器学习管道分析论证难以基于其事实,修辞定位和扬声器承诺的命题类型之间的困难。无法妥善处理这些小平面,使这些系统不准确地理解细粒度的主张类型。在本文中,我们展示了一种注释四种复杂命题类型的方法,即规范性索赔,欲望,未来可能性和报告的演讲。我们开发混合机器学习和人工流程,以供注释,允许复杂语言现象的有效和可靠的注释,并逐步分析总统辩论中的修辞策略和结构。这个新的数据集和方法可以支持寻求更加细致的论证的技术研究人员,以及争论理论家开发新的定量分析。

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