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Hierarchically organized behavior and its neural foundations:A reinforcement learning perspective

机译:分层组织的行为及其神经基础:强化学习视角

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Research on human and animal behavior has long emphasized its hierarchical structure— the divisibility of ongoing behavior into discrete tasks, which are comprised of subtask sequences, which in turn are built of simple actions. The hierarchical structure of behavior has also been of enduring interest within neuroscience, where it has been widely considered to reflect prefrontal cortical functions. In this paper, we reexamine behavioral hierarchy and its neural substrates from the point of view of recent developments in computational reinforcement learning. Specifically, we consider a set of approaches known collectively as hierarchical reinforcement learning, which extend the reinforcement learning paradigm by allowing the learning agent to aggregate actions into reusable subroutines or skills. A close look at the components of hierarchical reinforcement learning suggests how they might map onto neural structures, in particular regions within the dorsolateral and orbital prefrontal cortex. It also suggests specific ways in which hierarchical reinforcement learning might provide a complement to existing psychological models of hierarchically structured behavior. A particularly important question that hierarchical reinforcement learning brings to the fore is that of how learning identifies new action routines that are likely to provide useful building blocks in solving a wide range of future problems. Here and at many other points, hierarchical reinforcement learning offers an appealing framework for investigating the computational and neural underpinnings of hierarchically structured behavior
机译:关于人类和动物行为的研究长期以来一直强调其层次结构-将正在进行的行为划分为离散任务,这些任务由子任务序列组成,而子任务序列又由简单的动作构成。行为的层次结构在神经科学领域也引起了人们的长期关注,在神经科学领域,人们普遍认为行为反映了前额叶皮层功能。在本文中,我们将从计算强化学习的最新发展的角度重新审视行为等级及其神经底物。具体来说,我们考虑了一组统称为分层强化学习的方法,该方法通过允许学习代理将动作聚合为可重用的子例程或技能来扩展强化学习范例。仔细观察分层强化学习的组成部分,可以发现它们如何映射到神经结构,特别是在背外侧和眶前额叶皮层内的区域。它还提出了分层强化学习可以为分层结构行为的现有心理模型提供补充的特定方式。分层强化学习引起的一个特别重要的问题是,学习如何识别新的动作例程,这些例程可能为解决各种未来问题提供有用的组成部分。在这里以及其他许多地方,分层强化学习为研究分层结构化行为的计算和神经基础提供了一个有吸引力的框架

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