Execute Order 66: Targeted Data Poisoning for Reinforcement Learning

01/03/2022
by   Harrison Foley, et al.
0

Data poisoning for reinforcement learning has historically focused on general performance degradation, and targeted attacks have been successful via perturbations that involve control of the victim's policy and rewards. We introduce an insidious poisoning attack for reinforcement learning which causes agent misbehavior only at specific target states - all while minimally modifying a small fraction of training observations without assuming any control over policy or reward. We accomplish this by adapting a recent technique, gradient alignment, to reinforcement learning. We test our method and demonstrate success in two Atari games of varying difficulty.

READ FULL TEXT

page 4

page 5

research
05/29/2019

Targeted Attacks on Deep Reinforcement Learning Agents through Adversarial Observations

This paper deals with adversarial attacks on perceptions of neural netwo...
research
09/08/2022

Reward Delay Attacks on Deep Reinforcement Learning

Most reinforcement learning algorithms implicitly assume strong synchron...
research
08/29/2022

Understanding the Limits of Poisoning Attacks in Episodic Reinforcement Learning

To understand the security threats to reinforcement learning (RL) algori...
research
10/13/2019

Policy Poisoning in Batch Reinforcement Learning and Control

We study a security threat to batch reinforcement learning and control w...
research
03/16/2020

Reinforcement Learning for Electricity Network Operation

This paper presents the background material required for the Learning to...
research
09/13/2023

Dynamic control of self-assembly of quasicrystalline structures through reinforcement learning

We propose reinforcement learning to control the dynamical self-assembly...
research
08/16/2021

Heterotic String Model Building with Monad Bundles and Reinforcement Learning

We use reinforcement learning as a means of constructing string compacti...

Please sign up or login with your details

Forgot password? Click here to reset