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Detecting 'Slippery Slope' and Other Argumentative Stances of Opposition Using Tree Kernels in Monologic Discourse

机译:在独白话语中检测“双层仁的”滑坡“和其他论证立场

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The aim of this study is to propose an innovative methodology to classify argumentative stances in a monologic argumentative context. Particularly, the proposed approach shows that Tree Kernels can be used in combination with traditional textual vectorization to discriminate between different stances of opposition without the need of extracting highly engineered features. This can be useful in many Argument Mining sub-tasks. In particular, this work explores the possibility of classifying opposition stances by training multiple classifiers to reach different degrees of granularity. Noticeably, discriminating support and opposition stances can be particularly useful when trying to detect Argument Schemes, one of the most challenging sub-task in the Argument Mining pipeline. In this sense, the approach can be also considered as an attempt to classify stances of opposition that are related to specific Argument Schemes.
机译:本研究的目的是提出一种创新的方法,以在独奏辩论语境中对争论立场进行分类。特别是,所提出的方法表明,树内核可以与传统的文本矢量化结合使用,以区分不同的反对者的阶段,而不需要提取高度设计的特征。这在许多参数挖掘子任务中都很有用。特别是,这项工作探讨了通过培训多个分类器来达到不同程度的粒度来分类对立阶段的可能性。在尝试检测参数方案时,明显地,歧视支持和反对阶段可能特别有用,这是参数挖掘管道中最具挑战性的子任务之一。从这个意义上讲,该方法也可以被认为是对与特定参数方案相关的反对派的阶段进行分类。

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