主动推理框架内主观幸福感的计算神经科学视角

Q1 Economics, Econometrics and Finance
Ryan Smith, L. Varshney, Susumu Nagayama, Masahiro Kazama, Takuya Kitagawa, Yoshiki Ishikawa
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引用次数: 4

摘要

理解和促进主观幸福感(SWB)一直是越来越多研究的主题,部分原因是它对健康和生产力的潜在贡献。到目前为止,SWB的概念化已经建立在社会心理学的基础上,主要集中在自我报告措施上。在本文中,我们探索了计算神经科学提供的潜在互补工具和理论视角,重点是主动推理(AI)框架。这个框架的动机是大脑无法直接接触世界;为了选择动作,它必须推断出它从身体和外部世界接收到的感官输入最可能的外部原因。由于感觉输入总是与多种解释一致,大脑的内部模型必须使用背景知识,以先前预期的形式,对其所处的情况以及通过采取一个或另一个行动将如何改变做出“最佳猜测”。这种最佳猜测是通过最小化一个误差信号产生的,该误差信号表示在给定选定动作的情况下预测和观察到的感觉之间的偏差——通过一个称为自由能(FE)的变量进行数学量化。至关重要的是,最近的提案表明,情绪体验是如何在人工智能中出现的,这是大脑跟踪其模型在选择行动以最小化FE方面的成功的自然结果。在本文中,我们利用人工智能中的概念和数学来强调如何使用不同的计算策略来最小化FE——有些策略比其他策略更成功。这提供了不同个体如何采用独特策略来实现高SWB的特征。它还强调了可以有效改进SWB的新方法。这些考虑使我们提出了一个新的计算框架来理解SWB。我们强调了这些模型中的几个参数,这些参数可以解释SWB中的个人和文化差异,以及它们如何激发新的干预措施。最后,我们提出了一系列基于计算模型的未来实证研究,这些研究可以补充当前研究幸福感及其改善的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational neuroscience perspective on subjective wellbeing within the active inference framework
Understanding and promoting subjective wellbeing (SWB) has been the topic of increasing research, due in part to its potential contributions to health and productivity. To date, the conceptualization of SWB has been grounded within social psychology and largely focused on self-report measures. In this paper, we explore the potentially complementary tools and theoretical perspectives offered by computational neuroscience, with a focus on the active inference (AI) framework. This framework is motivated by the fact that the brain does not have direct access to the world; to select actions, it must instead infer the most likely external causes of the sensory input it receives from both the body and the external world. Because sensory input is always consistent with multiple interpretations, the brain’s internal model must use background knowledge, in the form of prior expectations, to make a “best guess” about the situation it is in and how it will change by taking one action or another. This best guess arises by minimizing an error signal representing the deviation between predicted and observed sensations given a chosen action—quantified mathematically by a variable called free energy (FE). Crucially, recent proposals have illustrated how emotional experience may emerge within AI as a natural consequence of the brain keeping track of the success of its model in selecting actions to minimize FE. In this paper, we draw on the concepts and mathematics in AI to highlight how different computational strategies can be used to minimize FE—some more successfully than others. This affords a characterization of how diverse individuals may adopt unique strategies for achieving high SWB. It also highlights novel ways in which SWB could be effectively improved. These considerations lead us to propose a novel computational framework for understanding SWB. We highlight several parameters in these models that could explain individual and cultural differences in SWB, and how they might inspire novel interventions. We conclude by proposing a line of future empirical research based on computational modelling that could complement current approaches to the study of wellbeing and its improvement.
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来源期刊
International Journal of Wellbeing
International Journal of Wellbeing Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
6.70
自引率
0.00%
发文量
32
审稿时长
10 weeks
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