潜在原因框架对理解成瘾现象的实用性

Sashank Pisupati , Angela J. Langdon , Anna B. Konova , Yael Niv
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引用次数: 0

摘要

由于无模型强化学习(RL)、习惯性行为和多巴胺能系统之间的密切联系,成瘾的计算模型通常依赖于无模型强化学习(RL)表述。然而,这种表述方式通常无法捕捉成瘾现象的关键重复特征,如渴求和复发。此外,它们也无法解释成瘾的目标导向性,而这就需要基于模型的对比性表述。在此,我们综合了越来越多的证据,并提出潜因框架可以帮助我们统一对成瘾中几种反复出现的现象的认识,将它们视为以前持续存在的 "潜因 "的推断回归。我们证明,将这一框架应用于巴甫洛夫和工具环境,有助于解释渴求和复吸的定义特征,如结果特异性、泛化和周期性动态。最后,我们认为这一框架可以在无模型和基于模型的表述之间架起桥梁,并通过考虑成瘾者的记忆、信仰和目标来解释现象学中的个体差异,从而推动以成瘾和康复的个体主观体验为中心。
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The utility of a latent-cause framework for understanding addiction phenomena

Computational models of addiction often rely on a model-free reinforcement learning (RL) formulation, owing to the close associations between model-free RL, habitual behavior and the dopaminergic system. However, such formulations typically do not capture key recurrent features of addiction phenomena such as craving and relapse. Moreover, they cannot account for goal-directed aspects of addiction that necessitate contrasting, model-based formulations. Here we synthesize a growing body of evidence and propose that a latent-cause framework can help unify our understanding of several recurrent phenomena in addiction, by viewing them as the inferred return of previous, persistent “latent causes”. We demonstrate that applying this framework to Pavlovian and instrumental settings can help account for defining features of craving and relapse such as outcome-specificity, generalization, and cyclical dynamics. Finally, we argue that this framework can bridge model-free and model-based formulations, and account for individual variability in phenomenology by accommodating the memories, beliefs, and goals of those living with addiction, motivating a centering of the individual, subjective experience of addiction and recovery.

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来源期刊
Addiction neuroscience
Addiction neuroscience Neuroscience (General)
CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
118 days
期刊最新文献
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