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Stance Classification of Context-Dependent Claims

机译:上下文相关声明的事态分类

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摘要

Recent work has addressed the problem of detecting relevant claims for a given controversial topic. We introduce the complementary task of claim stance classification, along with the first benchmark dataset for this task. We decompose this problem into: (a) open-domain target identification for topic and claim (b) sentiment classification for each target, and (c) open-domain contrast detection between the topic and the claim targets. Manual annotation of the dataset confirms the applicability and validity of our model. We describe an implementation of our model, focusing on a novel algorithm for contrast detection. Our approach achieves promising results, and is shown to outperform several baselines, which represent the common practice of applying a single, monolithic classifier for stance classification.
机译:最近的工作解决了针对给定争议主题检测相关主张的问题。我们介绍了索赔立场分类的补充任务,以及该任务的第一个基准数据集。我们将此问题分解为:(a)主题和声明的开放域目标识别(b)每个目标的情感分类,以及(c)主题与声明目标之间的开放域对比检测。手动注释数据集可以确认我们模型的适用性和有效性。我们将介绍模型的实现,重点是用于对比度检测的新型算法。我们的方法取得了令人鼓舞的结果,并被证明优于几个基准,这代表了应用单个整体式分类器进行姿态分类的常见做法。

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