A Kernel-Based Approach to Non-Stationary Reinforcement Learning in Metric Spaces

07/09/2020
by   Omar Darwiche Domingues, et al.
51

In this work, we propose KeRNS: an algorithm for episodic reinforcement learning in non-stationary Markov Decision Processes (MDPs) whose state-action set is endowed with a metric. Using a non-parametric model of the MDP built with time-dependent kernels, we prove a regret bound that scales with the covering dimension of the state-action space and the total variation of the MDP with time, which quantifies its level of non-stationarity. Our method generalizes previous approaches based on sliding windows and exponential discounting used to handle changing environments. We further propose a practical implementation of KeRNS, we analyze its regret and validate it experimentally.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset