Simulating Emotions: An Active Inference Model of Emotional State Inference and Emotion Concept Learning

被引:73
|
作者
Smith, Ryan [1 ]
Parr, Thomas [2 ]
Friston, Karl J. [2 ]
机构
[1] Laureate Inst Brain Res, Tulsa, OK 74136 USA
[2] UCL, Wellcome Ctr Human Neuroimaging, Inst Neurol, London, England
来源
FRONTIERS IN PSYCHOLOGY | 2019年 / 10卷
关键词
emotion concepts; trait emotional awareness; learning; computational neuroscience; active inference; TORONTO-ALEXITHYMIA-SCALE; MEDIAL PREFRONTAL CORTEX; EXPRESSION THERAPY; GENDER-DIFFERENCES; ANXIETY DISORDER; SILENT SYNAPSES; PREMOTOR THEORY; NEURAL BASIS; AWARENESS; EXPERIENCE;
D O I
10.3389/fpsyg.2019.02844
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
The ability to conceptualize and understand one's own affective states and responses - or "Emotional awareness" (EA) - is reduced in multiple psychiatric populations; it is also positively correlated with a range of adaptive cognitive and emotional traits. While a growing body of work has investigated the neurocognitive basis of EA, the neurocomputational processes underlying this ability have received limited attention. Here, we present a formal Active Inference (AI) model of emotion conceptualization that can simulate the neurocomputational (Bayesian) processes associated with learning about emotion concepts and inferring the emotions one is feeling in a given moment. We validate the model and inherent constructs by showing (i) it can successfully acquire a repertoire of emotion concepts in its "childhood", as well as (ii) acquire new emotion concepts in synthetic "adulthood," and (iii) that these learning processes depend on early experiences, environmental stability, and habitual patterns of selective attention. These results offer a proof of principle that cognitive-emotional processes can be modeled formally, and highlight the potential for both theoretical and empirical extensions of this line of research on emotion and emotional disorders.
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页数:24
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