A Regret Minimization Approach to Iterative Learning Control
Machine Learning
2021-03-01 v1 Optimization and Control
Machine Learning
Abstract
We consider the setting of iterative learning control, or model-based policy learning in the presence of uncertain, time-varying dynamics. In this setting, we propose a new performance metric, planning regret, which replaces the standard stochastic uncertainty assumptions with worst case regret. Based on recent advances in non-stochastic control, we design a new iterative algorithm for minimizing planning regret that is more robust to model mismatch and uncertainty. We provide theoretical and empirical evidence that the proposed algorithm outperforms existing methods on several benchmarks.
Cite
@article{arxiv.2102.13478,
title = {A Regret Minimization Approach to Iterative Learning Control},
author = {Naman Agarwal and Elad Hazan and Anirudha Majumdar and Karan Singh},
journal= {arXiv preprint arXiv:2102.13478},
year = {2021}
}