ICLR2022
Distributional Reinforcement Learning with Monotonic Splines
Yudong Luo, Guiliang Liu, Haonan Duan, Oliver Schulte, Pascal Poupart
18 citations
Abstract
One key challenge in quantile based distributional RL lies in how to parameterize the quantile function when minimizing the Wasserstein metric of temporal differences. Existing algorithms use step functions or piece-wise linear functions. We propose to learn smooth continuous quantile functions represented by monotonic rationalquadratic splines