论文标题

情绪的多任务模型辅助气候变化推文的立场检测

A Multi-task Model for Sentiment Aided Stance Detection of Climate Change Tweets

论文作者

Upadhyaya, Apoorva, Fisichella, Marco, Nejdl, Wolfgang

论文摘要

气候变化已成为我们这个时代最大的挑战之一。 Twitter等社交媒体平台在提高公众意识和传播有关当前气候危机危险的知识方面发挥了重要作用。随着通过社交媒体进行有关气候变化的广告系列和沟通的越来越多,信息可能会引起更多的认识并吸引公众和政策制定者。但是,这些Twitter的交流导致了信念的两极分化,以意见为主的意识形态以及经常分为两个气候变化否认者和信徒的社区。在本文中,我们提出了一个框架,该框架有助于在Twitter上识别拒绝陈述,从而将推文的立场归类为对气候变化的两种态度之一(Denier/Believer)。关于气候变化的Twitter数据的情感方面深深植根于公众对气候变化的态度。因此,我们的工作着重于学习两个密切相关的任务:气候变化推文的立场检测和情感分析。我们提出了一个多任务框架,该框架同时执行立场检测(主要任务)和情感分析(辅助任务)。所提出的模型结合了特定功能和特定于共享的注意框架,以融合多个功能并学习这两个任务的广义功能。实验结果表明,所提出的框架可以通过受益于辅助任务,即情感分析,即与其Uni-Modal和单任务变体相比,提高了主要任务的性能,即姿势检测。

Climate change has become one of the biggest challenges of our time. Social media platforms such as Twitter play an important role in raising public awareness and spreading knowledge about the dangers of the current climate crisis. With the increasing number of campaigns and communication about climate change through social media, the information could create more awareness and reach the general public and policy makers. However, these Twitter communications lead to polarization of beliefs, opinion-dominated ideologies, and often a split into two communities of climate change deniers and believers. In this paper, we propose a framework that helps identify denier statements on Twitter and thus classifies the stance of the tweet into one of the two attitudes towards climate change (denier/believer). The sentimental aspects of Twitter data on climate change are deeply rooted in general public attitudes toward climate change. Therefore, our work focuses on learning two closely related tasks: Stance Detection and Sentiment Analysis of climate change tweets. We propose a multi-task framework that performs stance detection (primary task) and sentiment analysis (auxiliary task) simultaneously. The proposed model incorporates the feature-specific and shared-specific attention frameworks to fuse multiple features and learn the generalized features for both tasks. The experimental results show that the proposed framework increases the performance of the primary task, i.e., stance detection by benefiting from the auxiliary task, i.e., sentiment analysis compared to its uni-modal and single-task variants.

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