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Hashtags, Emotions, and Comments: A Large-Scale Dataset to Understand Fine-Grained Social Emotions to Online Topics

机译:Hashtags,情绪和评论:一个大型数据集,以了解在线主题的细粒度社会情绪

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This paper studies social emotions to online discussion topics. While most prior work focus on emotions from writers, we investigate readers' responses and explore the public feelings to an online topic. A large-scale dataset is collected from Chinese microblog Sina Weibo with over 13 thousand trending topics, emotion votes in 24 fine-grained types from massive participants, and user comments to allow context understanding.1 In experiments, we examine baseline performance to predict a topic's possible social emotions in a multi-label classification setting. The results show that a seq2seq model with user comment modeling performs the best, even surpassing human prediction. More analyses shed light on the effects of emotion types, topic description lengths, contexts from user comments, and the limited capacity of the existing models.
机译:本文研究了在线讨论主题的社会情绪。虽然大多数事先工作都专注于作家的情绪,但我们调查读者的回应,并探索对在线话题的公众感受。从中国微博新浪微博收集了一个大型数据集,拥有超过13000个趋势主题,从大规模参与者的24种细粒度类型的情感投票,以及用户评论,以允许上下文理解。在实验中,我们检查基线性能以预测a主题在多标签分类环境中可能的社交情绪。结果表明,具有用户评论建模的SEQ2SEQ模型表现了最佳,甚至超过人类预测。更多分析揭示情绪类型的效果,主题描述长度,来自用户评论的上下文以及现有模型的容量有限。

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