EEG-based classification of learning strategies : Model-based and model-free reinforcement learning

Dongjae Kim, C. Weston, Sang Wan Lee
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引用次数: 3

Abstract

Human reinforcement learning (RL) has been known to utilize two distinctive learning strategies, model-based (MB) and model-free (MF) RL. The process of arbitration between MB and MF is thought to be located in the ventrolateral prefrontal cortex and frontopolar cortex. These loci are near the cortex, so we expect the related information can be represented in EEG signals. However, EEG signal patterns considering the arbitration of RL has not been investigated. In this paper, we tested a EEG-based classification model to separate these two different types of trials, each of which is meant to promote MB and MF RL. We found, for the first time, firm evidence to indicate that information pertaining to learning strategies is represented in prefrontal EEG signals.
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基于脑电图的学习策略分类:基于模型和无模型的强化学习
人类强化学习(RL)利用两种不同的学习策略,基于模型(MB)和无模型(MF)强化学习。MB和MF之间的仲裁过程被认为位于腹外侧前额叶皮层和额极皮层。这些位点靠近大脑皮层,因此我们期望相关信息能够在脑电信号中得到表征。然而,考虑RL仲裁的脑电信号模式尚未被研究。在本文中,我们测试了一个基于脑电图的分类模型来分离这两种不同类型的试验,每一种试验都是为了促进MB和MF的RL。我们首次发现,有确凿的证据表明,与学习策略有关的信息在前额叶脑电图信号中得到了体现。
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