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Good News or Bad News: Using Affect Control Theory to Analyze Readers' Reaction Towards News Articles

机译:好消息还是坏消息:使用情感控制理论分析读者对新闻的反应

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This paper proposes a novel approach to sentiment analysis that leverages work in sociology on symbolic interactionism. The proposed approach uses Affect Control Theory (ACT) to analyze readers' sentiment towards factual (objective) content and towards its entities (subject and object). ACT is a theory of affective reasoning that uses empirically derived equations to predict the sentiments and emotions that arise from events. This theory relies on several large lexicons of words with affective ratings in a three-dimensional space of evaluation, potency, and activity (EPA). The equations and lexicons of ACT were evaluated on a newly collected news-headlines corpus. ACT lexicon was expanded using a label propagation algorithm, resulting in 86,604 new words. The predicted emotions for each news headline was then computed using the augmented lexicon and ACT equations. The results had a precision of 82%, 79%, and 68% towards the event, the subject, and object, respectively. These results are significantly higher than those of standard sentiment analysis techniques.
机译:本文提出了一种新颖的情感分析方法,该方法利用了社会学上关于符号互动主义的研究成果。所提出的方法使用情感控制理论(ACT)分析读者对事实(客观)内容及其实体(主体和客体)的情感。 ACT是一种情感推理理论,它使用经验推导的方程式来预测事件引起的情绪和情感。该理论依赖于在评估,效用和活动(EPA)的三维空间中具有情感等级的几个大型词汇词典。 ACT的等式和词典在新收集的新闻头条语料库上进行了评估。使用标签传播算法扩展了ACT词典,产生了86,604个新单词。然后,使用增强的词典和ACT方程计算每个新闻标题的预测情绪。结果针对事件,主题和对象的精度分别为82%,79%和68%。这些结果明显高于标准情感分析技术。

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