A Reduction of Imitation Learning and Structured Prediction to No-Regret Online Learning
Indexed inarxivdatacite
Abstract
Sequential prediction problems such as imitation learning, where future observations depend on previous predictions (actions), violate the common i.i.d. assumptions made in statistical learning. This leads to poor performance in theory and often in practice. Some recent approaches provide stronger guarantees in this setting, but remain somewhat unsatisfactory as they train either non-stationary or stochastic policies and require a large number of iterations. In this paper, we propose a new iterative algorithm, which trains a stationary deterministic policy, that can be seen as a no regret algorithm in an online learning setting. We show that any such no regret algorithm, combined with additional reduction…
Citation impact
842
total citations
- FWCI
- 3.63
- Percentile
- 100%
- References
- 0
Citations per year
Authors
3Topics & keywords
Topics
Keywords
- Regret
- Computer science
- Benchmark (surveying)
- Artificial intelligence
- Imitation
- Online learning
- Reduction (mathematics)
- Machine learning
UN Sustainable Development Goals
- No poverty
No related works found for this paper.