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强化学习和漂移扩散模型的同步分层贝叶斯参数估计:教程及与神经数据的链接

Simultaneous Hierarchical Bayesian Parameter Estimation for Reinforcement Learning and Drift Diffusion Models: a Tutorial and Links to Neural Data.

作者信息

Pedersen Mads L, Frank Michael J

机构信息

Cognitive, Linguistic & Psychological Sciences, Brown University, Providence, USA.

Robert J. & Nancy D. Carney Institute for Brain Science, Brown University, Providence, USA.

出版信息

Comput Brain Behav. 2020 Dec;3(4):458-471. doi: 10.1007/s42113-020-00084-w. Epub 2020 May 26.

Abstract

Cognitive models have been instrumental for generating insights into the brain processes underlying learning and decision making. In reinforcement learning it has recently been shown that not only choice proportions but also their latency distributions can be well captured when the choice function is replaced with a sequential sampling model such as the drift diffusion model. Hierarchical Bayesian parameter estimation further enhances the identifiability of distinct learning and choice parameters. One caveat is that these models can be time-consuming to build, sample from, and validate, especially when models include links between neural activations and model parameters. Here we describe a novel extension to the widely used hierarchical drift diffusion model (HDDM) toolbox, which facilitates flexible construction, estimation, and evaluation of the reinforcement learning drift diffusion model (RLDDM) using hierarchical Bayesian methods. We describe the types of experiments most applicable to the model and provide a tutorial to illustrate how to perform quantitative data analysis and model evaluation. Parameter recovery confirmed that the method can reliably estimate parameters with varying numbers of synthetic subjects and trials. We also show that the simultaneous estimation of learning and choice parameters can improve the sensitivity to detect brain-behavioral relationships, including the impact of learned values and fronto-basal ganglia activity patterns on dynamic decision parameters.

摘要

认知模型有助于深入了解学习和决策背后的大脑过程。在强化学习中,最近有研究表明,当用诸如漂移扩散模型这样的序列采样模型取代选择函数时,不仅选择比例,而且其潜伏期分布也能得到很好的捕捉。分层贝叶斯参数估计进一步提高了不同学习和选择参数的可识别性。一个需要注意的问题是,这些模型的构建、采样和验证可能很耗时,尤其是当模型包含神经激活与模型参数之间的联系时。在此,我们描述了对广泛使用的分层漂移扩散模型(HDDM)工具箱的一种新颖扩展,它有助于使用分层贝叶斯方法灵活构建、估计和评估强化学习漂移扩散模型(RLDDM)。我们描述了最适用于该模型的实验类型,并提供了一个教程来说明如何进行定量数据分析和模型评估。参数恢复证实,该方法能够可靠地估计不同数量的合成受试者和试验的参数。我们还表明,同时估计学习和选择参数可以提高检测脑-行为关系的敏感性,包括学习值和额底神经节活动模式对动态决策参数的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5c7a/8811713/012ceb326900/nihms-1772040-f0001.jpg

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