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Joint extraction of argument components and relations

机译:联合提取论点成分和关系

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Argumentation mining (AM) aims at automatically extracting argument structures in documents. AM consists of three sub-tasks: argument identification, argument component classification and relation prediction. Some recent end-to-end AM works produce promising results, but their performances on the latter two AM sub-tasks are not satisfactory. To tackle this problem, in this work, we propose a framework that solves these two sub-tasks at the same time. We approach the problem by selecting linguistic features between sentence pairs, and training supervised learning models to label the argument component types and the relations at the same time. Our experiments on the persuasive essay corpus show that our system can achieve competitive labelling accuracy compared with the state-of-the-art AM techniques.
机译:自变量挖掘(AM)旨在自动提取文档中的自变量结构。 AM包含三个子任务:参数识别,参数组件分类和关系预测。最近一些端到端的AM工作产生了可喜的结果,但是它们在后两个AM子任务上的表现并不令人满意。为了解决这个问题,在这项工作中,我们提出了一个框架,可以同时解决这两个子任务。我们通过选择句子对之间的语言特征并训练监督学习模型来同时标注自变量成分类型和关系来解决该问题。我们对有说服力的论文语料库的实验表明,与最新的AM技术相比,我们的系统可以实现具有竞争力的标签准确性。

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