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Demonstrating the Reliability of Self-Annotated Emotion Data

机译:证明自我注释情绪数据的可靠性

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Vent is a specialised iOS/Android social media platform with the stated goal to encourage people to post about their feelings and explicitly label them. In this paper, we study a snapshot of more than 100 million messages obtained from the developers of Vent, together with the labels assigned by the authors of the messages. We establish the quality of the self-annotated data by conducting a qualitative analysis, a vocabulary-based analysis, and by training and testing an emotion classifier. We conclude that the self-annotated labels of our corpus are indeed indicative of the emotional contents expressed in the text and thus can support more detailed analyses of emotion expression on social media, such as emotion trajectories and factors influencing them.
机译:Vent是一个专门的iOS/Android社交媒体平台,其既定目标是鼓励人们发布自己的感受,并明确标注。在本文中,我们研究了从Vent开发者那里获得的超过1亿条消息的快照,以及消息作者指定的标签。我们通过进行定性分析、基于词汇的分析,以及训练和测试情绪分类器,来确定自注释数据的质量。我们的结论是,语料库中的自我注释标签确实表明了文本中表达的情感内容,因此可以支持对社交媒体上的情感表达进行更详细的分析,例如情感轨迹和影响因素。

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