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一项综合性的努力:弥合动机强度理论与最近的神经计算和神经元努力与控制分配模型之间的差距。

An integrative effort: Bridging motivational intensity theory and recent neurocomputational and neuronal models of effort and control allocation.

机构信息

Geneva Motivation Lab, Faculty of Psychology and Educational Sciences, University of Geneva.

Department of Cognitive, Linguistic, and Psychological Sciences, Brown University.

出版信息

Psychol Rev. 2023 Jul;130(4):1081-1103. doi: 10.1037/rev0000372. Epub 2022 Jun 9.

Abstract

An increasing number of cognitive, neurobiological, and computational models have been proposed in the last decade, seeking to explain how humans allocate physical or cognitive effort. Most models share conceptual similarities with motivational intensity theory (MIT), an influential classic psychological theory of motivation. Yet, little effort has been made to integrate such models, which remain confined within the explanatory level for which they were developed, that is, psychological, computational, neurobiological, and neuronal. In this critical review, we derive novel analyses of three recent computational and neuronal models of effort allocation-the expected value of control theory, the reinforcement meta-learner (RML) model, and the neuronal model of attentional effort-and establish a formal relationship between these models and MIT. Our analyses reveal striking similarities between predictions made by these models, with a shared key tenet: a nonmonotonic relationship between perceived task difficulty and effort, following a sawtooth or inverted U shape. In addition, the models converge on the proposition that the dorsal anterior cingulate cortex may be responsible for determining the allocation of effort and cognitive control. We conclude by discussing the distinct contributions and strengths of each theory toward understanding neurocomputational processes of effort allocation. Finally, we highlight the necessity for a unified understanding of effort allocation, by drawing novel connections between different theorizing of adaptive effort allocation as described by the presented models. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

摘要

在过去的十年中,越来越多的认知、神经生物学和计算模型被提出来,试图解释人类如何分配体力或认知努力。大多数模型与动机强度理论(MIT)有概念上的相似之处,MIT 是一种有影响力的经典心理动机理论。然而,人们很少努力将这些模型整合起来,这些模型仍然局限于它们被开发的解释层面,即心理、计算、神经生物学和神经元。在这篇批判性评论中,我们对最近的三个关于努力分配的计算和神经元模型——控制理论的期望价值、强化元学习器(RML)模型和注意力努力的神经元模型——进行了新的分析,并建立了这些模型与 MIT 之间的正式关系。我们的分析揭示了这些模型的预测之间存在惊人的相似之处,它们有一个共同的关键原则:感知任务难度与努力之间呈非单调关系,呈锯齿形或倒 U 形。此外,这些模型都得出了一个结论,即背侧前扣带皮层可能负责决定努力和认知控制的分配。最后,我们通过在不同理论之间建立新的联系,讨论了每个理论对理解努力分配的神经计算过程的独特贡献和优势,突出了统一理解努力分配的必要性。最后,我们通过在不同理论之间建立新的联系,讨论了每个理论对理解努力分配的神经计算过程的独特贡献和优势,突出了统一理解努力分配的必要性。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。

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