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Scrutable Feature Sets for Stance Classification

机译:姿态分类的可搜索特征集

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This paper describes and evaluates a novel feature set for stance classification of argumentative texts; i.e. deciding whether a post by a user is for or against the issue being debated. We model the debate both as attitude bearing features, including a set of automatically acquired 'topic terms' associated with a Distributional Lexical Model (DLM) that captures the writer's attitude towards the topic term, and as dependency features that represent the points being made in the debate. The stance of the text towards the issue being debated is then learnt in a supervised framework as a function of these features. The main advantage of our feature set is that it is scrutable: The reasons for a classification can be explained to a human user in natural language. We also report that our method outperforms previous approaches to stance classification as well as a range of baselines based on sentiment analysis and topic-sentiment analysis.
机译:本文描述和评估了一种新颖的特征集,用于论证文本的立场分类。即确定用户发布的帖子是赞成还是反对正在讨论的问题。我们将辩论建模为态度特征,包括一组自动获取的“主题词”,这些词与捕获作者对主题词的态度的分布式词汇模型(DLM)相关联,并作为代表特征的依赖项特征辩论。然后,根据这些功能,在受监督的框架中了解文本对所讨论问题的立场。我们的功能集的主要优点在于它可以理解:分类的原因可以用自然语言向人类用户解释。我们还报告说,我们的方法优于以往的态度分类方法以及基于情感分析和主题情感分析的一系列基线。

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