弱耦合问题的分层分解可扩展强化学习

Hazem Toutounji, C. Rothkopf, J. Triesch
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引用次数: 4

摘要

强化学习,或奖励依赖学习,已经非常成功地描述了动物和人类如何调整他们的行为,以便在各种任务中增加他们的收益并减少他们的损失。经验研究进一步确定了这种计算所需的大量神经元相关。但是,一般来说,对于大脑来说,根据描述世界状态的所有可用维度对行为及其结果进行编码是非常昂贵的。这表明学习算法的存在,能够利用世界上存在的独立性,从而减少表征和学习方面的计算成本。一种可能的解决方案是对具有独立动态和奖励的任务维度使用单独的学习器。但独立的条件通常限制太多。在这里,我们提出了一种分层强化学习解决方案,用于更一般的情况,其中动态不是独立的,而是弱耦合的,并展示了如何将信用分配给不同的模块,这些模块共同解决任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable reinforcement learning through hierarchical decompositions for weakly-coupled problems
Reinforcement Learning, or Reward-Dependent Learning, has been very successful at describing how animals and humans adjust their actions so as to increase their gains and reduce their losses in a wide variety of tasks. Empirical studies have furthermore identified numerous neuronal correlates of quantities necessary for such computations. But, in general it is too expensive for the brain to encode actions and their outcomes with respect to all available dimensions describing the state of the world. This suggests the existence of learning algorithms that are capable of taking advantage of the independencies present in the world and hence reducing the computational costs in terms of representations and learning. A possible solution is to use separate learners for task dimensions with independent dynamics and rewards. But the condition of independence is usually too restrictive. Here, we propose a hierarchical reinforcement learning solution for the more general case in which the dynamics are not independent but weakly coupled and show how to assign credit to the different modules, which solve the task jointly.
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