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The Social Mood of News: Self-reported Annotations to Design Automatic Mood Detection Systems

机译:新闻的社会情绪:设计自动情绪检测系统的自我报告注释

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In this paper, we address the issue of automatic prediction of readers' mood from newspaper articles and comments. As online newspapers are becoming more and more similar to social media platforms, users can provide affective feedback, such as mood and emotion. We have exploited the self-reported annotation of mood categories obtained from the metadata of the Italian online newspaper corriere.it to design and evaluate a system for predicting five different mood categories from news articles and comments: indignation, disappointment, worry, satisfaction, and amusement. The outcome of our experiments shows that overall, bag-of-word-ngrams perform better compared to all other feature sets; however, stylometric features perform better for the mood score prediction of articles. Our study shows that self-reported annotations can be used to design automatic mood prediction systems.
机译:在本文中,我们解决了根据报纸文章和评论自动预测读者情绪的问题。随着在线报纸越来越类似于社交媒体平台,用户可以提供情感反馈,例如情绪和情感。我们利用从意大利在线报纸corriere.meta的元数据中获得的自我报告的情绪类别注释来设计和评估一种系统,用于从新闻报道和评论中预测五种不同的情绪类别:愤慨,失望,担忧,满意和娱乐。我们的实验结果表明,与所有其他功能集相比,总体而言,词袋法的表现更好。但是,笔势功能对于文章的情绪得分预测表现更好。我们的研究表明,自我报告的注释可用于设计自动情绪预测系统。

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