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Is Something Better than Nothing? Automatically Predicting Stance-based Arguments using Deep Learning and Small Labelled Dataset.

机译:有事总比没有要好吗?使用深度学习和小标签数据集自动预测基于姿态的参数。

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Online reviews have become a popular portal among customers making decisions about purchasing products. A number of corpora of reviews have been widely investigated in NLP in general, and, in particular, in argument mining. This is a subset of NLP that deals with extracting arguments and the relations among them from user-based content. A major problem faced by argument mining research is the lack of human-annotated data. In this paper, we investigate the use of weakly supervised and semi-supervised methods for automatically annotating data, and thus providing large annotated datasets. We do this by building on previous work that explores the classification of opinions present in reviews based on whether the stance is expressed explicitly or implicitly. In the work described here, we automatically annotate stance as implicit or explicit and our results show that the datasets we generate, although noisy, can be used to learn better models for implicit/explicit opinion classification.
机译:在线评论已成为决定购买产品的客户之间的流行门户。在NLP中,尤其是在论证挖掘中,已经广泛地研究了许多评论语料库。这是NLP的子集,用于处理从基于用户的内容中提取参数及其之间的关系。论据挖掘研究面临的一个主要问题是缺乏人工注释的数据。在本文中,我们研究了使用弱监督和半监督方法自动注释数据,从而提供大型注释数据集。为此,我们基于先前的工作进行了探索,该工作基于显式或隐式表示立场来探讨评论中存在的观点的分类。在这里描述的工作中,我们自动将姿态注释为隐式或显式,并且我们的结果表明,虽然产生了噪音,但我们生成的数据集可用于学习更好的隐式/显式意见分类模型。

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