Piero De Lellis

1paper

1 Paper

OCDec 12, 2019
Control-Tutored Reinforcement Learning

Francesco De Lellis, Fabrizia Auletta, Giovanni Russo et al.

We introduce a control-tutored reinforcement learning (CTRL) algorithm. The idea is to enhance tabular learning algorithms so as to improve the exploration of the state-space, and substantially reduce learning times by leveraging some limited knowledge of the plant encoded into a tutoring model-based control strategy. We illustrate the benefits of our novel approach and its effectiveness by using the problem of controlling one or more agents to herd and contain within a goal region a set of target free-roving agents in the plane.