English

Improper Learning for Non-Stochastic Control

Machine Learning 2020-06-26 v3 Optimization and Control Machine Learning

Abstract

We consider the problem of controlling a possibly unknown linear dynamical system with adversarial perturbations, adversarially chosen convex loss functions, and partially observed states, known as non-stochastic control. We introduce a controller parametrization based on the denoised observations, and prove that applying online gradient descent to this parametrization yields a new controller which attains sublinear regret vs. a large class of closed-loop policies. In the fully-adversarial setting, our controller attains an optimal regret bound of T\sqrt{T}-when the system is known, and, when combined with an initial stage of least-squares estimation, T2/3T^{2/3} when the system is unknown; both yield the first sublinear regret for the partially observed setting. Our bounds are the first in the non-stochastic control setting that compete with \emph{all} stabilizing linear dynamical controllers, not just state feedback. Moreover, in the presence of semi-adversarial noise containing both stochastic and adversarial components, our controller attains the optimal regret bounds of poly(logT)\mathrm{poly}(\log T) when the system is known, and T\sqrt{T} when unknown. To our knowledge, this gives the first end-to-end T\sqrt{T} regret for online Linear Quadratic Gaussian controller, and applies in a more general setting with adversarial losses and semi-adversarial noise.

Keywords

Cite

@article{arxiv.2001.09254,
  title  = {Improper Learning for Non-Stochastic Control},
  author = {Max Simchowitz and Karan Singh and Elad Hazan},
  journal= {arXiv preprint arXiv:2001.09254},
  year   = {2020}
}