Group Distributionally Robust Reinforcement Learning with Hierarchical Latent Variables

10/21/2022
by   Mengdi Xu, et al.
4

One key challenge for multi-task Reinforcement learning (RL) in practice is the absence of task indicators. Robust RL has been applied to deal with task ambiguity, but may result in over-conservative policies. To balance the worst-case (robustness) and average performance, we propose Group Distributionally Robust Markov Decision Process (GDR-MDP), a flexible hierarchical MDP formulation that encodes task groups via a latent mixture model. GDR-MDP identifies the optimal policy that maximizes the expected return under the worst-possible qualified belief over task groups within an ambiguity set. We rigorously show that GDR-MDP's hierarchical structure improves distributional robustness by adding regularization to the worst possible outcomes. We then develop deep RL algorithms for GDR-MDP for both value-based and policy-based RL methods. Extensive experiments on Box2D control tasks, MuJoCo benchmarks, and Google football platforms show that our algorithms outperform classic robust training algorithms across diverse environments in terms of robustness under belief uncertainties. Demos are available on our project page (<https://sites.google.com/view/gdr-rl/home>).

READ FULL TEXT

page 8

page 21

page 23

page 24

page 27

research
05/11/2023

On Practical Robust Reinforcement Learning: Practical Uncertainty Set and Double-Agent Algorithm

We study a robust reinforcement learning (RL) with model uncertainty. Gi...
research
06/18/2019

Robust Reinforcement Learning for Continuous Control with Model Misspecification

We provide a framework for incorporating robustness -- to perturbations ...
research
12/28/2021

Robustness and risk management via distributional dynamic programming

In dynamic programming (DP) and reinforcement learning (RL), an agent le...
research
12/31/2021

Robust Entropy-regularized Markov Decision Processes

Stochastic and soft optimal policies resulting from entropy-regularized ...
research
02/15/2022

User-Oriented Robust Reinforcement Learning

Recently, improving the robustness of policies across different environm...
research
09/17/2021

Exploring the Robustness of Distributional Reinforcement Learning against Noisy State Observations

In real scenarios, state observations that an agent observes may contain...
research
06/20/2019

Near-optimal Reinforcement Learning using Bayesian Quantiles

We study model-based reinforcement learning in finite communicating Mark...

Please sign up or login with your details

Forgot password? Click here to reset