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A new computational account of cognitive control over reinforcement-based decision-making: Modeling of a probabilistic learning task

机译:基于强化决策的认知控制的新计算方法:概率学习任务的建模

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Recent work on decision-making field offers an account of dual-system theory for decision-making process. This theory holds that this process is conducted by two main controllers: a goal-directed system and a habitual system. In the reinforcement learning (RL) domain, the habitual behaviors are connected with model-free methods, in which appropriate actions are learned through trial-and-error experiences. However, goal-directed behaviors are associated with model-based methods of RL, in which actions are selected using a model of the environment. Studies on cognitive control also suggest that during processes like decision-making, some cortical and subcortical structures work in concert to monitor the consequences of decisions and to adjust control according to current task demands. Here a computational model is presented based on dual system theory and cognitive control perspective of decision-making. The proposed model is used to simulate human performance on a variant of probabilistic learning task. The basic proposal is that the brain implements a dual controller, while an accompanying monitoring system detects some kinds of conflict including a hypothetical cost-conflict one. The simulation results address existing theories about two event-related potentials, namely error related negativity (ERN) and feedback related negativity (FRN), and explore the best account of them. Based on the results, some testable predictions are also presented. (C) 2015 Elsevier Ltd. All rights reserved.
机译:决策领域的最新工作为决策过程提供了双重系统理论的解释。这个理论认为,这个过程是由两个主要的控制者进行的:目标导向系统和习惯性系统。在强化学习(RL)领域中,习惯行为与无模型方法相关,在无模型方法中,通过反复试验经验学习适当的行动。但是,目标导向的行为与RL的基于模型的方法相关联,其中使用环境模型选择动作。关于认知控制的研究还表明,在决策过程中,某些皮质和皮质下结构会协同工作,以监控决策的结果并根据当前任务需求调整控制。这里基于对偶系统理论和决策的认知控制观点,提出了一种计算模型。所提出的模型用于在概率学习任务的变体上模拟人类的表现。基本建议是,大脑执行双重控制,而伴随的监视系统则检测到某些类型的冲突,包括假设的成本冲突。仿真结果解决了有关两个事件相关电位的现有理论,即错误相关的负性(ERN)和反馈相关的负性(FRN),并探讨了它们的最佳解释。根据结果​​,还提出了一些可检验的预测。 (C)2015 Elsevier Ltd.保留所有权利。

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