English

Towards Sample-efficient Apprenticeship Learning from Suboptimal Demonstration

Robotics 2021-10-12 v1 Machine Learning

Abstract

Learning from Demonstration (LfD) seeks to democratize robotics by enabling non-roboticist end-users to teach robots to perform novel tasks by providing demonstrations. However, as demonstrators are typically non-experts, modern LfD techniques are unable to produce policies much better than the suboptimal demonstration. A previously-proposed framework, SSRR, has shown success in learning from suboptimal demonstration but relies on noise-injected trajectories to infer an idealized reward function. A random approach such as noise-injection to generate trajectories has two key drawbacks: 1) Performance degradation could be random depending on whether the noise is applied to vital states and 2) Noise-injection generated trajectories may have limited suboptimality and therefore will not accurately represent the whole scope of suboptimality. We present Systematic Self-Supervised Reward Regression, S3RR, to investigate systematic alternatives for trajectory degradation. We carry out empirical evaluations and find S3RR can learn comparable or better reward correlation with ground-truth against a state-of-the-art learning from suboptimal demonstration framework.

Keywords

Cite

@article{arxiv.2110.04347,
  title  = {Towards Sample-efficient Apprenticeship Learning from Suboptimal Demonstration},
  author = {Letian Chen and Rohan Paleja and Matthew Gombolay},
  journal= {arXiv preprint arXiv:2110.04347},
  year   = {2021}
}

Comments

Presented at AI-HRI symposium as part of AAAI-FSS 2021 (arXiv:2109.10836)

R2 v1 2026-06-24T06:44:58.356Z