心理学
愤怒
价(化学)
唤醒
认知心理学
情绪分类
空格(标点符号)
情感科学
情感(语言学)
自然主义
认知科学
面部表情
社会心理学
沟通
认识论
计算机科学
量子力学
操作系统
物理
哲学
作者
Dacher Keltner,Jeffrey A. Brooks,Alan Cowen
标识
DOI:10.1177/09637214221150511
摘要
Here we present semantic space theory and the data-driven methods it entails. Across the largest studies to date of emotion-related experience, expression, and physiology, we find that emotion is high dimensional, defined by blends of upward of 20 distinct kinds of emotions, and not reducible to low-dimensional structures and conceptual processes as assumed by constructivist accounts. Specific emotions are not separated by sharp boundaries, contrary to basic emotion theory, and include states that often blend. Emotion concepts such as “anger” are primary in the unfolding of emotional experience and emotion recognition, more so than core affect processes of valence and arousal. We conclude by outlining studies showing how these data-driven discoveries are a basis of machine-learning models that are serving larger-scale, more diverse studies of naturalistic emotional behavior.
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