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Robust Imitation Learning from Corrupted Demonstrations

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arxiv 2201.12594 v1 pith:QIKZUBV2 submitted 2022-01-29 cs.LG cs.AIstat.ML

Robust Imitation Learning from Corrupted Demonstrations

classification cs.LG cs.AIstat.ML
keywords corrupteddemonstrationslearningimitationrobustbehaviorclassicalcloning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We consider offline Imitation Learning from corrupted demonstrations where a constant fraction of data can be noise or even arbitrary outliers. Classical approaches such as Behavior Cloning assumes that demonstrations are collected by an presumably optimal expert, hence may fail drastically when learning from corrupted demonstrations. We propose a novel robust algorithm by minimizing a Median-of-Means (MOM) objective which guarantees the accurate estimation of policy, even in the presence of constant fraction of outliers. Our theoretical analysis shows that our robust method in the corrupted setting enjoys nearly the same error scaling and sample complexity guarantees as the classical Behavior Cloning in the expert demonstration setting. Our experiments on continuous-control benchmarks validate that our method exhibits the predicted robustness and effectiveness, and achieves competitive results compared to existing imitation learning methods.

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  1. Ambient Diffusion Policy: Imitation Learning from Suboptimal Data in Robotics

    cs.RO 2026-06 unverdicted novelty 7.0

    Ambient Diffusion Policy enables better imitation learning from suboptimal robot data by leveraging spectral properties to restrict data usage to specific diffusion times.