May 3, 2024, 4:54 a.m. | Xiatao Sun, Shuo Yang, Mingyan Zhou, Kunpeng Liu, Rahul Mangharam

cs.LG updates on arXiv.org arxiv.org

arXiv:2303.00638v3 Announce Type: replace
Abstract: Imitation learning has been widely applied to various autonomous systems thanks to recent development in interactive algorithms that address covariate shift and compounding errors induced by traditional approaches like behavior cloning. However, existing interactive imitation learning methods assume access to one perfect expert. Whereas in reality, it is more likely to have multiple imperfect experts instead. In this paper, we propose MEGA-DAgger, a new DAgger variant that is suitable for interactive learning with multiple imperfect …

arxiv cs.lg cs.ro experts imitation learning multiple type

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