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Optimal Rates for Bandit Nonstochastic Control

24 May 2023
Y. Jennifer Sun
Stephen Newman
Elad Hazan
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Abstract

Linear Quadratic Regulator (LQR) and Linear Quadratic Gaussian (LQG) control are foundational and extensively researched problems in optimal control. We investigate LQR and LQG problems with semi-adversarial perturbations and time-varying adversarial bandit loss functions. The best-known sublinear regret algorithm of \cite{gradu2020non} has a T34T^{\frac{3}{4}}T43​ time horizon dependence, and its authors posed an open question about whether a tight rate of T\sqrt{T}T​ could be achieved. We answer in the affirmative, giving an algorithm for bandit LQR and LQG which attains optimal regret (up to logarithmic factors) for both known and unknown systems. A central component of our method is a new scheme for bandit convex optimization with memory, which is of independent interest.

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