Department of Psychological and Brain Sciences, Dartmouth College.
Perspect Psychol Sci. 2017 May;12(3):508-526. doi: 10.1177/1745691616685863.
Although it is possible to observe when another person is having an emotional moment, we also derive information about the affective states of others from what they tell us they are feeling. In an effort to distill the complexity of affective experience, psychologists routinely focus on a simplified subset of subjective rating scales (i.e., dimensions) that capture considerable variability in reported affect: reported valence (i.e., how good or bad?) and reported arousal (e.g., how strong is the emotion you are feeling?). Still, existing theoretical approaches address the basic organization and measurement of these affective dimensions differently. Some approaches organize affect around the dimensions of bipolar valence and arousal (e.g., the circumplex model), whereas alternative approaches organize affect around the dimensions of unipolar positivity and unipolar negativity (e.g., the bivariate evaluative model). In this report, we (a) replicate the data structure observed when collected according to the two approaches described above, and reinterpret these data to suggest that the relationship between each pair of affective dimensions is conditional on valence ambiguity, and (b) formalize this structure with a mathematical model depicting a valence ambiguity dimension that decreases in range as arousal decreases (a triangle). This model captures variability in affective ratings better than alternative approaches, increasing variance explained from ~60% to over 90% without adding parameters.
虽然我们可以观察到他人的情绪时刻,但我们也可以从他们告诉我们的情绪中获取有关他人情感状态的信息。为了简化情感体验的复杂性,心理学家通常专注于简化的主观评分量表子集(即维度),这些维度捕捉到报告的情感的相当大的可变性:报告的效价(即感觉有多好或多坏?)和报告的唤醒(例如,你感受到的情绪有多强烈?)。尽管如此,现有的理论方法对这些情感维度的基本组织和测量的处理方式不同。一些方法围绕双极效价和唤醒的维度来组织情感(例如,环模型),而替代方法则围绕单极正性和单极负性的维度来组织情感(例如,双变量评价模型)。在本报告中,我们(a)复制了根据上述两种方法收集数据时观察到的数据结构,并重新解释这些数据,以表明每对情感维度之间的关系取决于效价模糊性,(b)用一个数学模型形式化这个结构,该模型描绘了一个效价模糊性维度,随着唤醒度的降低,该维度的范围减小(一个三角形)。与替代方法相比,该模型能更好地捕捉情感评分的可变性,在不增加参数的情况下,将解释的方差从约 60%提高到 90%以上。