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Mapping the Passions: Toward a High-Dimensional Taxonomy of Emotional Experience and Expression

机译:映射激情:朝着情感经验和表达的高维分类

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What would a comprehensive atlas of human emotions include? For 50 years, scientists have sought to map emotion-related experience, expression, physiology, and recognition in terms of the "basic six"-anger, disgust, fear, happiness, sadness, and surprise. Claims about the relationships between these six emotions and prototypical facial configurations have provided the basis for a long-standing debate over the diagnostic value of expression (for review and latest installment in this debate, see Barrett et al., p. 1). Building on recent empirical findings and methodologies, we offer an alternative conceptual and methodological approach that reveals a richer taxonomy of emotion. Dozens of distinct varieties of emotion are reliably distinguished by language, evoked in distinct circumstances, and perceived in distinct expressions of the face, body, and voice. Traditional models-both the basic six and affective-circumplex model (valence and arousal)-capture a fraction of the systematic variability in emotional response. In contrast, emotion-related responses (e.g., the smile of embarrassment, triumphant postures, sympathetic vocalizations, blends of distinct expressions) can be explained by richer models of emotion. Given these developments, we discuss why tests of a basic-six model of emotion are not tests of the diagnostic value of facial expression more generally. Determining the full extent of what facial expressions can tell us, marginally and in conjunction with other behavioral and contextual cues, will require mapping the high-dimensional, continuous space of facial, bodily, and vocal signals onto richly multifaceted experiences using large-scale statistical modeling and machine-learning methods.
机译:人类情绪的全面地图集是什么包括? 50年来,科学家们试图在“基本六” - 厌恶,厌恶,恐惧,幸福,悲伤和惊喜方面地图映射情感相关的经验,表达,生理学和认可。关于这六种情绪与原型面部配置之间的关系的索赔为表达式诊断价值提供了长期辩论的基础(用于在本次辩论中进行审查和最新分期,请参阅Barrett等,第1页)。建立最近的实证发现和方法,提供一种替代的概念和方法论方法,揭示了情绪的富裕分类。在不同的情况下唤起了几十种不同的情感情绪,并在不同的情况下感知到脸部,身体和声音的不同表达。传统模型 - 基本六种和情感 - 环绕模型(价和唤醒) - 对情绪反应的系统变异性分数。相比之下,情感相关的反应(例如,尴尬的微笑,令人愉快的姿势,交感神经发声,不同表达的混合物)可以通过更丰富的情感模型来解释。鉴于这些发展,我们讨论了为什么对六种情感模型的测试不是更普遍地测试面部表情的诊断价值。确定面部表情可以告诉我们,略微和与其他行为和语境提示结合的全部范围,需要使用大规模统计来将高维,身体和声号的高维,身体和声号的空间映射到丰富的多方面的经验中。建模与机器学习方法。

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