经验加权吸引力模型的分层贝叶斯实现。

Zhihao Zhang, Saksham Chandra, Andrew Kayser, Ming Hsu, Joshua L Warren
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引用次数: 0

摘要

社交和决策障碍往往是神经精神疾病的首发症状。近年来,经济博弈和策略学习计算模型被越来越多地应用于描述社会行为的个体差异,以及由于疾病进展、治疗或其他因素而导致的个体差异在不同时期的变化。与此同时,这些数据的高维度对这些模型的统计估计提出了重要挑战,可能会限制这些方法在患者和特殊人群中的应用。我们介绍了一类策略学习模型--经验加权吸引力(EWA)的分层贝叶斯实现方法,该方法在行为博弈论中得到了广泛应用。重要的是,这种方法提供了一个统一的框架来捕捉参与者之间和参与者内部的变化,包括与疾病进展、合并症和治疗状态相关的变化。我们使用模拟数据表明,在参数估计和不确定性量化方面,我们的分层贝叶斯方法优于现有文献中常用的代表性代理和个体水平估计方法。此外,我们还利用经验数据集证明了我们的方法在平衡模型拟合度和复杂性方面优于其他方法的价值。与分层贝叶斯方法在行为科学其他领域取得的成功相一致,我们的分层贝叶斯 EWA 模型是一种强大而灵活的工具,可应用于各种行为范式,研究复杂的人类行为与生物因素之间的相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Hierarchical Bayesian Implementation of the Experience-Weighted Attraction Model.

A Hierarchical Bayesian Implementation of the Experience-Weighted Attraction Model.

A Hierarchical Bayesian Implementation of the Experience-Weighted Attraction Model.

A Hierarchical Bayesian Implementation of the Experience-Weighted Attraction Model.

Social and decision-making deficits are often the first symptoms of neuropsychiatric disorders. In recent years, economic games, together with computational models of strategic learning, have been increasingly applied to the characterization of individual differences in social behavior, as well as their changes across time due to disease progression, treatment, or other factors. At the same time, the high dimensionality of these data poses an important challenge to statistical estimation of these models, potentially limiting the adoption of such approaches in patients and special populations. We introduce a hierarchical Bayesian implementation of a class of strategic learning models, experience-weighted attraction (EWA), that is widely used in behavioral game theory. Importantly, this approach provides a unified framework for capturing between- and within-participant variation, including changes associated with disease progression, comorbidity, and treatment status. We show using simulated data that our hierarchical Bayesian approach outperforms representative agent and individual-level estimation methods that are commonly used in extant literature, with respect to parameter estimation and uncertainty quantification. Furthermore, using an empirical dataset, we demonstrate the value of our approach over competing methods with respect to balancing model fit and complexity. Consistent with the success of hierarchical Bayesian approaches in other areas of behavioral science, our hierarchical Bayesian EWA model represents a powerful and flexible tool to apply to a wide range of behavioral paradigms for studying the interplay between complex human behavior and biological factors.

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来源期刊
CiteScore
4.30
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