Improving Robustness of Deep Reinforcement Learning Agents: Environment Attacks based on Critic Networks

04/07/2021
by   Lucas Schott, et al.
42

To improve policy robustness of deep reinforcement learning agents, a line of recent works focus on producing disturbances of the environment. Existing approaches of the literature to generate meaningful disturbances of the environment are adversarial reinforcement learning methods. These methods set the problem as a two-player game between the protagonist agent, which learns to perform a task in an environment, and the adversary agent, which learns to disturb the protagonist via modifications of the considered environment. Both protagonist and adversary are trained with deep reinforcement learning algorithms. Alternatively, we propose in this paper to build on gradient-based adversarial attacks, usually used for classification tasks for instance, that we apply on the critic network of the protagonist to identify efficient disturbances of the environment. Rather than learning an attacker policy, which usually reveals as very complex and unstable, we leverage the knowledge of the critic network of the protagonist, to dynamically complexify the task at each step of the learning process. We show that our method, while being faster and lighter, leads to significantly better improvements in policy robustness than existing methods of the literature.

READ FULL TEXT

page 10

page 15

research
10/07/2022

Improving Robustness of Deep Reinforcement Learning Agents: Environment Attack based on the Critic Network

To improve policy robustness of deep reinforcement learning agents, a li...
research
01/03/2022

Actor-Critic Network for Q A in an Adversarial Environment

Significant work has been placed in the Q A NLP space to build models ...
research
03/18/2020

Generating Socially Acceptable Perturbations for Efficient Evaluation of Autonomous Vehicles

Deep reinforcement learning methods have been widely used in recent year...
research
03/31/2019

Risk Averse Robust Adversarial Reinforcement Learning

Deep reinforcement learning has recently made significant progress in so...
research
10/13/2022

Observed Adversaries in Deep Reinforcement Learning

In this work, we point out the problem of observed adversaries for deep ...
research
08/22/2022

BARReL: Bottleneck Attention for Adversarial Robustness in Vision-Based Reinforcement Learning

Robustness to adversarial perturbations has been explored in many areas ...
research
11/18/2017

Leave no Trace: Learning to Reset for Safe and Autonomous Reinforcement Learning

Deep reinforcement learning algorithms can learn complex behavioral skil...

Please sign up or login with your details

Forgot password? Click here to reset