网络模型中情绪持续时间的嵌入研究。

IF 2.1 Q2 PSYCHOLOGY Affective science Pub Date : 2023-08-12 DOI:10.1007/s42761-023-00203-3
Jens Lange
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引用次数: 1

摘要

与早期的理论相反,情绪往往会持续更长的时间。人们情绪持续时间的可变性导致了精神病理学。因此,情绪理论需要解释这种可变性。到目前为止,综述只列出了情绪持续时间的预测因素,而没有将其整合到理论框架中。解释为什么这些预测因素与情绪持续时间有关的机制仍然未知。我建议将对情绪持续时间的研究嵌入情绪的网络模型中,并使用正式的网络模型通过模拟来说明中心思想。在网络模型中,情绪的组成部分相互之间有直接的因果关系。根据该模型,情绪持续时间更长(a)当组件连接更紧密时,或(b)当组件具有更高的阈值时(即,它们更容易被激活)。高度连接会延长情绪,因为组件不断被重新激活。更高的阈值会延长情绪,因为即使连接较低,组件也更容易被重新激活。来自情绪连贯性研究和情绪持续时间预测因子与情绪事件外成分关系研究的间接证据支持网络模型的有用性。我进一步论证并在模拟中表明,潜在情绪导致情绪成分变化的共同原因模型无法解释情绪持续时间的研究。最后,我从网络的角度描述了情绪持续时间和情绪动力学的未来研究方向。补充信息:在线版本包含补充材料,可访问10.1007/s42761-023-00203-3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Embedding Research on Emotion Duration in a Network Model

Contrary to early theorizing, emotions often last for longer periods of time. Variability in people’s emotion duration contributes to psychopathologies. Therefore, emotion theories need to account for this variability. So far, reviews only list predictors of emotion duration without integrating them in a theoretical framework. Mechanisms explaining why these predictors relate to emotion duration remain unknown. I propose to embed research on emotion duration in a network model of emotions and illustrate the central ideas with simulations using a formal network model. In the network model, the components of an emotion have direct causal effects on each other. According to the model, emotions last longer (a) when the components are more strongly connected or (b) when the components have higher thresholds (i.e., they are more easily activated). High connectivity prolongs emotions because components are constantly reactivated. Higher thresholds prolong emotions because components are more easily reactivated even when connectivity is lower. Indirect evidence from research on emotion coherence and research on the relationship of predictors of emotion duration with components outside of emotional episodes supports the usefulness of the network model. I further argue and show in simulations that a common cause model, in which a latent emotion causes changes in emotion components, cannot account for research on emotion duration. Finally, I describe future directions for research on emotion duration and emotion dynamics from a network perspective.

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