Discriminator-Guided Model-Based Offline Imitation Learning

Wenjia Zhang, Haoran Xu, Haoyi Niu, Peng Cheng, Ming Li, Heming Zhang, Guyue Zhou, Xianyuan Zhan
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引用次数: 5

Abstract

Offline imitation learning (IL) is a powerful method to solve decision-making problems from expert demonstrations without reward labels. Existing offline IL methods suffer from severe performance degeneration under limited expert data. Including a learned dynamics model can potentially improve the state-action space coverage of expert data, however, it also faces challenging issues like model approximation/generalization errors and suboptimality of rollout data. In this paper, we propose the Discriminator-guided Model-based offline Imitation Learning (DMIL) framework, which introduces a discriminator to simultaneously distinguish the dynamics correctness and suboptimality of model rollout data against real expert demonstrations. DMIL adopts a novel cooperative-yet-adversarial learning strategy, which uses the discriminator to guide and couple the learning process of the policy and dynamics model, resulting in improved model performance and robustness. Our framework can also be extended to the case when demonstrations contain a large proportion of suboptimal data. Experimental results show that DMIL and its extension achieve superior performance and robustness compared to state-of-the-art offline IL methods under small datasets.
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基于鉴别器引导模型的离线模仿学习
离线模仿学习(IL)是一种无需奖励标签就能从专家演示中解决决策问题的有效方法。现有的离线IL方法在有限的专家数据下存在严重的性能退化问题。包括学习动力学模型可以潜在地提高专家数据的状态-动作空间覆盖率,然而,它也面临着模型近似/泛化误差和推出数据的次优性等挑战性问题。在本文中,我们提出了鉴别器引导的基于模型的离线模仿学习(DMIL)框架,该框架引入了一个鉴别器来同时区分模型推出数据与真实专家演示的动态正确性和次优性。DMIL采用了一种新颖的合作对抗学习策略,利用鉴别器引导和耦合策略和动态模型的学习过程,提高了模型的性能和鲁棒性。我们的框架还可以扩展到演示中包含大量次优数据的情况。实验结果表明,在小数据集下,与目前最先进的离线IL方法相比,dml及其扩展具有更好的性能和鲁棒性。
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