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Human Emotion Experiences Can Be Predicted on Theoretical Grounds: Evidence from Verbal Labeling

机译:人类情感经验可以预见在理论上:从言词证据标签

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摘要

In an effort to demonstrate that the verbal labeling of emotional experiences obeys lawful principles, we tested the feasibility of using an expert system called the Geneva Emotion Analyst (GEA), which generates predictions based on an appraisal theory of emotion. Several thousand respondents participated in an Internet survey that applied GEA to self-reported emotion experiences. Users recalled appraisals of emotion-eliciting events and labeled the experienced emotion with one or two words, generating a massive data set on realistic, intense emotions in everyday life. For a final sample of 5969 respondents we show that GEA achieves a high degree of predictive accuracy by matching a user’s appraisal input to one of 13 theoretically predefined emotion prototypes. The first prediction was correct in 51% of the cases and the overall diagnosis was considered as at least partially correct or appropriate in more than 90% of all cases. These results support a component process model that encourages focused, hypothesis-guided research on elicitation and differentiation, memory storage and retrieval, and categorization and labeling of emotion episodes. We discuss the implications of these results for the study of emotion terms in natural language semantics.
机译:为了证明情感体验的言语标注符合合法原则,我们测试了使用名为“日内瓦情感分析师”(GEA)的专家系统的可行性,该系统基于情感评估理论生成预测。数千名受访者参加了一项互联网调查,该调查将GEA应用于自我报告的情绪体验。用户回顾了对引发情绪的事件的评估,并用一个或两个词标记了所经历的情绪,从而生成了大量有关日常生活中逼真的强烈情绪的数据集。对于5969名受访者的最终样本,我们表明GEA通过将用户的评估输入与13种理论上预先定义的情绪原型之一进行匹配,可以实现较高的预测准确性。最初的预测在51%的病例中是正确的,并且在90%以上的病例中,整体诊断被认为至少部分正确或适当。这些结果支持了一个组成过程模型,该模型鼓励在假设和指导下进行有关启发和区分,记忆存储和检索以及情感发作的分类和标记的集中研究。我们讨论了这些结果对于自然语言语义学中的情感术语研究的意义。

著录项

  • 期刊名称 other
  • 作者

    Klaus R. Scherer; Ben Meuleman;

  • 作者单位
  • 年(卷),期 -1(8),3
  • 年度 -1
  • 页码 e58166
  • 总页数 8
  • 原文格式 PDF
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