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An Integrated Computational Framework for Attention, Reinforcement Learning, and Working Memory

机译:一种关注,加固学习和工作记忆的集成计算框架

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This paper proposes a ?interpretation of selective attention as a form of control of working memory based on self-generated reward signals and model-free reinforcement learning. In addition to being simple and parsimonious, this approach systematizes a number of classic psychological constructs without calling for additional, specific mechanisms. Finally, the papers presents the results of an empirical test of this framework, and elaborates on the implications of our findings for general models of control and intelligent behavior, as well as neurobiological models of the basal ganglia.
机译:本文提出了一种基于自我产生的奖励信号和无模型增强学习的工作记忆控制的选择性关注。除了简单和解析之外,这种方法还系统化了许多经典的心理构建,而无需拨打额外的特定机制。最后,论文提出了本框架的实证测试的结果,并详细阐述了我们对控制和智能行为一般模型的影响,以及基础神经节的神经生物学模型。

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