用 hBayesDM 软件包揭示强化学习和决策的神经计算机制

Woo-Young Ahn, Nathaniel Haines, Lei Zhang
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引用次数: 0

摘要

强化学习和决策(RLDM)提供了一个定量框架和计算理论,我们可以利用这些框架和理论将精神疾病与神经认知功能的基本层面区分开来。RLDM 为评估和潜在诊断精神病患者提供了一种新方法,临床研究人员对 RLDM 和计算精神病学的热情日益高涨。这种框架还能让人们深入了解特定 RLDM 过程的大脑基质,基于模型的功能磁共振成像(fMRI)或脑电图(EEG)数据分析就是一例。然而,研究人员往往认为这种方法技术性太强,难以在研究中采用。因此,我们迫切需要开发一种用户友好型工具,以广泛传播计算精神病学方法。我们介绍了一个名为 hBayesDM(决策任务的分层贝叶斯建模)的 R 软件包,它提供了一系列 RLDM 任务和社会交换游戏的计算建模。hBayesDM 软件包提供了最先进的分层贝叶斯建模方法,在这种方法中,个体参数和群体参数(即后验分布)是以相互制约的方式同时估算的。同时,该软件包对用户非常友好:用户只需一行代码就能进行计算建模、输出可视化和贝叶斯模型比较。用户还可以提取基于模型的 fMRI/EEG 所需的逐次试验潜变量(如预测误差)。有了 hBayesDM 软件包,我们希望任何人只要具备最基本的编程知识,就能利用最前沿的计算建模方法来研究多个决策系统(如目标导向系统、习惯系统和巴甫洛夫系统)的基本过程和相互作用。通过这种方式,我们希望 hBayesDM 软件包能够促进先进建模方法的传播,并使广大研究人员能够轻松地在不同人群中开展计算精神病学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Revealing Neurocomputational Mechanisms of Reinforcement Learning and Decision-Making With the hBayesDM Package.

Revealing Neurocomputational Mechanisms of Reinforcement Learning and Decision-Making With the hBayesDM Package.

Revealing Neurocomputational Mechanisms of Reinforcement Learning and Decision-Making With the hBayesDM Package.

Revealing Neurocomputational Mechanisms of Reinforcement Learning and Decision-Making With the hBayesDM Package.

Reinforcement learning and decision-making (RLDM) provide a quantitative framework and computational theories with which we can disentangle psychiatric conditions into the basic dimensions of neurocognitive functioning. RLDM offer a novel approach to assessing and potentially diagnosing psychiatric patients, and there is growing enthusiasm for both RLDM and computational psychiatry among clinical researchers. Such a framework can also provide insights into the brain substrates of particular RLDM processes, as exemplified by model-based analysis of data from functional magnetic resonance imaging (fMRI) or electroencephalography (EEG). However, researchers often find the approach too technical and have difficulty adopting it for their research. Thus, a critical need remains to develop a user-friendly tool for the wide dissemination of computational psychiatric methods. We introduce an R package called hBayesDM (hierarchical Bayesian modeling of Decision-Making tasks), which offers computational modeling of an array of RLDM tasks and social exchange games. The hBayesDM package offers state-of-the-art hierarchical Bayesian modeling, in which both individual and group parameters (i.e., posterior distributions) are estimated simultaneously in a mutually constraining fashion. At the same time, the package is extremely user-friendly: users can perform computational modeling, output visualization, and Bayesian model comparisons, each with a single line of coding. Users can also extract the trial-by-trial latent variables (e.g., prediction errors) required for model-based fMRI/EEG. With the hBayesDM package, we anticipate that anyone with minimal knowledge of programming can take advantage of cutting-edge computational-modeling approaches to investigate the underlying processes of and interactions between multiple decision-making (e.g., goal-directed, habitual, and Pavlovian) systems. In this way, we expect that the hBayesDM package will contribute to the dissemination of advanced modeling approaches and enable a wide range of researchers to easily perform computational psychiatric research within different populations.

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来源期刊
CiteScore
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