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Leveraging Human Knowledge in Tabular Reinforcement Learning: A Study of Human Subjects

机译:利用表格钢筋学习的人类知识:对人类受试者的研究

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Reinforcement Learning (RL) can be extremely effective in solving complex, real-world problems. However, injecting human knowledge into an RL agent may require extensive effort on the human designer's part. To date, human factors are generally not considered in the development and evaluation of possible approaches. In this paper, we propose and evaluate a novel method, based on human psychology literature, which we show to be both effective and efficient, for both expert and non-expert designers, in injecting human knowledge for speeding up tabular RL.
机译:强化学习(RL)在解决复杂,现实问题方面可能非常有效。然而,将人类知识注入RL代理可能需要在人类设计师的部分上进行广泛的努力。迄今为止,人类因素通常不考虑在开发和评估可能的方法中。在本文中,我们提出并评估了一种基于人类心理学文献的新方法,这对于专家和非专家设计师来说,我们表现出有效和高效地注入了加速表格RL的人类知识。

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