论文标题
Tweets2Stance:用户立场检测利用零射击学习算法的推文
Tweets2Stance: Users stance detection exploiting Zero-Shot Learning Algorithms on Tweets
论文作者
论文摘要
在过去的几年中,人们越来越关注预测活跃的社交媒体使用者的政治取向,这是研究政治预测,观点动态建模和用户两极分化的巨大帮助。现有的方法(主要针对Twitter用户)依赖于基于内容的分析或基于内容,网络和通信分析的混合。最近的研究观点利用了一个事实,即用户的政治亲和力主要取决于他/她对重大政治和社会问题的立场,从而转移着通过在社交网络上共享的用户生成的内容来检测用户的立场。这里描述的工作重点是完全无监督的立场检测框架,该框架通过利用基于内容的Twitter时间轴的分析来预测用户对特定社会政治陈述的立场。地面用户的立场可能来自投票建议申请,在线工具,这些工具可以通过将他们的政治偏好与党的政治立场进行比较,以帮助公民确定其政治倾向。从了解20个不同陈述的六方协议级别的知识开始,该研究的目的是预测一方P的立场,该党对每个陈述s利用Twitter Party帐户在Twitter上写的内容。为此,我们提出了Tweets2Stance(T2S),这是一种新颖且完全无监督的姿势探测器框架,依靠零拍的学习技术来快速准确地在未标记的数据上运行。有趣的是,可以将T2用于任何感兴趣的环境,而不仅限于政治媒体。从多个实验获得的结果表明,尽管一般最大F1值为0.4,但T2s可以正确预测1.13的一般最小值MAE的姿态,这是任务复杂性的巨大成就。
In the last years there has been a growing attention towards predicting the political orientation of active social media users, being this of great help to study political forecasts, opinion dynamics modeling and users polarization. Existing approaches, mainly targeting Twitter users, rely on content-based analysis or are based on a mixture of content, network and communication analysis. The recent research perspective exploits the fact that a user's political affinity mainly depends on his/her positions on major political and social issues, thus shifting the focus on detecting the stance of users through user-generated content shared on social networks. The work herein described focuses on a completely unsupervised stance detection framework that predicts the user's stance about specific social-political statements by exploiting content-based analysis of its Twitter timeline. The ground-truth user's stance may come from Voting Advice Applications, online tools that help citizens to identify their political leanings by comparing their political preferences with party political stances. Starting from the knowledge of the agreement level of six parties on 20 different statements, the objective of the study is to predict the stance of a Party p in regard to each statement s exploiting what the Twitter Party account wrote on Twitter. To this end we propose Tweets2Stance (T2S), a novel and totally unsupervised stance detector framework which relies on the zero-shot learning technique to quickly and accurately operate on non-labeled data. Interestingly, T2S can be applied to any social media user for any context of interest, not limited to the political one. Results obtained from multiple experiments show that, although the general maximum F1 value is 0.4, T2S can correctly predict the stance with a general minimum MAE of 1.13, which is a great achievement considering the task complexity.