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TIRL: Enriching Actor-Critic RL with non-expert human teachers and a Trust Model

机译:TIRL:通过非专业人类老师和信任模型丰富演员批判性RL

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Reinforcement learning (RL) algorithms have been demonstrated to be very attractive tools to train agents to achieve sequential tasks. However, these algorithms require too many training data to converge to be efficiently applied to physical robots. By using a human teacher, the learning process can be made faster and more robust, but the overall performance heavily depends on the quality and availability of teacher demonstrations or instructions. In particular, when these teaching signals are inadequate, the agent may fail to learn an optimal policy. In this paper, we introduce a trust-based interactive task learning approach. We propose an RL architecture able to learn both from environment rewards and from various sparse teaching signals provided by non-expert teachers, using an actor-critic agent, a human model and a trust model. We evaluate the performance of this architecture on 4 different setups using a maze environment with different simulated teachers and show that the benefits of the trust model.
机译:强化学习(RL)算法已被证明是培训代理商完成顺序任务的非常有吸引力的工具。但是,这些算法需要太多的训练数据才能收敛以有效地应用于物理机器人。通过使用人工老师,可以使学习过程更快,更强大,但是总体表现在很大程度上取决于教师演示或指导的质量和可用性。特别是,当这些教学信号不足时,代理可能无法学习最佳策略。在本文中,我们介绍了一种基于信任的交互式任务学习方法。我们提出一种RL体系结构,该体系结构可以使用行为批评者,人类模型和信任模型来学习环境奖励和非专家教师提供的各种稀疏教学信号。我们使用具有不同模拟教师的迷宫环境在4个不同的设置上评估了该体系结构的性能,并证明了信任模型的好处。

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