NeurIPS2020
Geometric Exploration for Online Control
Orestis Plevrakis, Elad Hazan
被引用 11 次
摘要
We study the control of an unknown linear dynamical system under general convex costs. The objective is minimizing regret vs. the class of disturbance-feedback-controllers, which encompasses all stabilizing linear-dynamical-controllers. In this work, we first consider the case of known cost functions, for which we design the first polynomial-time algorithm with -regret, where is the dimension of the state plus the dimension of control input. The -horizon dependence is optimal, and improves upon the previous best known bound of . The main component of our algorithm is a novel geometric exploration strategy: we adaptively construct a sequence of barycentric spanners in the policy space. Second, we consider the case of bandit feedback, for which we give the first polynomial-time algorithm with -regret, building on Stochastic Bandit Convex Optimization.