Mitigating Covariate Shift in Imitation Learning via Offline Data With Partial Coverage
–Neural Information Processing Systems
This paper studies offline Imitation Learning (IL) where an agent learns to imitate an expert demonstrator without additional online environment interactions. Instead, the learner is presented with a static offline dataset of state-action-next state triples from a potentially less proficient behavior policy. We introduce Model-based IL from Offline data (MILO): an algorithmic framework that utilizes the static dataset to solve the offline IL problem efficiently both in theory and in practice. In theory, even if the behavior policy is highly sub-optimal compared to the expert, we show that as long as the data from the behavior policy provides sufficient coverage on the expert state-action traces (and with no necessity for a global coverage over the entire state-action space), MILO can provably combat the covariate shift issue in IL. Complementing our theory results, we also demonstrate that a practical implementation of our approach mitigates covariate shift on benchmark MuJoCo continuous control tasks.
Neural Information Processing Systems
Oct-9-2024, 10:38:55 GMT
- Technology:
- Information Technology > Artificial Intelligence
- Machine Learning (0.78)
- Robots (0.64)
- Information Technology > Artificial Intelligence