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Hybrid of Reinforcement and Imitation Learning for Human-Like Agents

机译:诸如人类代理的加固和模仿学习的混合

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Reinforcement learning methods achieve performance superior to humans in a wide range of complex tasks and uncertain environments. However, high performance is not the sole metric for practical use such as in a game AI or autonomous driving. A highly efficient agent performs greedily and selfishly, and is thus inconvenient for surrounding users, hence a demand for human-like agents. Imitation learning reproduces the behavior of a human expert and builds a human-like agent. However, its performance is limited to the expert's. In this study, we propose a training scheme to construct a human-like and efficient agent via mixing reinforcement and imitation learning for discrete and continuous action space problems. The proposed hybrid agent achieves a higher performance than a strict imitation learning agent and exhibits more human-like behavior, which is measured via a human sensitivity test.
机译:强化学习方法在广泛的复杂任务和不确定环境中实现优于人类的性能。然而,高性能不是实际使用的唯一度量,例如游戏AI或自主驾驶。一种高效的代理商贪婪地和自私地表演,因此对周围用户来说是不方便的,因此对人类的需求。模仿学习再现人类专家的行为并建立一种像人类代理人。但是,它的性能仅限于专家。在这项研究中,我们提出了一种培训方案,通过混合增强和模仿学习来构建人类和高效的代理,以进行离散和连续的动作空间问题。所提出的杂交剂实现比严格的仿制药物更高的性​​能,并且表现出更多的人类样行为,其通过人的敏感性测试来测量。

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