Decision-Making, Pro-variance Biases and Mood-Related Traits.

Computational psychiatry (Cambridge, Mass.) Pub Date : 2024-08-21 eCollection Date: 2024-01-01 DOI:10.5334/cpsy.114
Wanjun Lin, Raymond J Dolan
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引用次数: 0

Abstract

In value-based decision-making there is wide behavioural variability in how individuals respond to uncertainty. Maladaptive responses to uncertainty have been linked to a vulnerability to mental illness, for example, between risk aversion and affective disorders. Here, we examine individual differences in risk sensitivity when subjects confront options drawn from different value distributions, where these embody the same or different means and variances. In simulations, we show that a model that learns a distribution using Bayes' rule and reads out different parts of the distribution under the influence of a risk-sensitive parameter (Conditional Value at Risk, CVaR) predicts how likely an agent is to prefer a broader over a narrow distribution (pro-variance bias/risk-seeking) under the same overall means. Using empirical data, we show that CVaR estimates correlate with participants' pro-variance biases better than a range of alternative parameters derived from other models. Importantly, across two independent samples, CVaR estimates and participants' pro-variance bias negatively correlated with trait rumination, a common trait in depression and anxiety. We conclude that a Bayesian-CVaR model captures individual differences in sensitivity to variance in value distributions and task-independent trait dispositions linked to affective disorders.

决策、亲方差偏差和情绪相关特质。
在以价值为基础的决策过程中,个人如何应对不确定性存在很大的行为差异。对不确定性的不适应反应与易患精神疾病有关,例如,风险规避与情感障碍之间的关系。在这里,我们研究了当受试者面对来自不同价值分布的选项时,风险敏感性的个体差异,这些分布体现了相同或不同的均值和方差。在模拟中,我们发现一个模型可以利用贝叶斯法则学习分布,并在风险敏感参数(风险条件值,CVaR)的影响下读出分布的不同部分,从而预测在总体均值相同的情况下,受试者偏好较宽分布而非较窄分布的可能性(偏好方差/寻求风险)。通过使用经验数据,我们发现 CVaR 估计值与参与者的偏好方差相关性优于其他模型得出的一系列替代参数。重要的是,在两个独立样本中,CVaR 估计值和参与者的亲方差偏差与特质反刍呈负相关,而特质反刍是抑郁和焦虑的常见特质。我们的结论是,贝叶斯-CVaR 模型能捕捉到个体对价值分布方差敏感性的差异,以及与情感障碍相关的与任务无关的特质倾向。
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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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
17 weeks
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