Detecting Dissonant Stance in Social Media: The Role of Topic Exposure

Vasudha Varadarajan, Nikita Soni, Weixi Wang, C. Luhmann, H. A. Schwartz, Naoya Inoue
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引用次数: 2

Abstract

We address dissonant stance detection, classifying conflicting stance between two input statements.Computational models for traditional stance detection have typically been trained to indicate pro/con for a given target topic (e.g. gun control) and thus do not generalize well to new topics.In this paper, we systematically evaluate the generalizability of dissonant stance detection to situations where examples of the topic have not been seen at all or have only been seen a few times.We show that dissonant stance detection models trained on only 8 topics, none of which are the target topic, can perform as well as those trained only on a target topic. Further, adding non-target topics boosts performance further up to approximately 32 topics where accuracies start to plateau. Taken together, our experiments suggest dissonant stance detection models can generalize to new unanticipated topics, an important attribute for the social scientific study of social media where new topics emerge daily.
社交媒体中不和谐立场的发现:话题曝光的作用
我们解决了不协调的立场检测,分类两个输入语句之间的冲突立场。传统姿态检测的计算模型通常被训练为对给定目标主题(例如枪支管制)表示赞成或反对,因此不能很好地推广到新主题。在本文中,我们系统地评估了不和谐姿态检测的泛化性,在这些情况下,主题的例子根本没有被看到或只被看到过几次。我们表明,仅在8个主题上训练的不协调姿态检测模型,其中没有一个是目标主题,可以表现得与仅在目标主题上训练的模型一样好。此外,添加非目标主题将性能进一步提高到大约32个主题,准确度开始趋于平稳。综上所述,我们的实验表明,不和谐姿态检测模型可以推广到新的意想不到的话题,这是社交媒体社会科学研究的一个重要属性,因为社交媒体每天都会出现新的话题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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