Adversarial Deep Reinforcement Learning for Cyber Security in Software Defined Networks

08/09/2023
by   Luke Borchjes, et al.
0

This paper focuses on the impact of leveraging autonomous offensive approaches in Deep Reinforcement Learning (DRL) to train more robust agents by exploring the impact of applying adversarial learning to DRL for autonomous security in Software Defined Networks (SDN). Two algorithms, Double Deep Q-Networks (DDQN) and Neural Episodic Control to Deep Q-Network (NEC2DQN or N2D), are compared. NEC2DQN was proposed in 2018 and is a new member of the deep q-network (DQN) family of algorithms. The attacker has full observability of the environment and access to a causative attack that uses state manipulation in an attempt to poison the learning process. The implementation of the attack is done under a white-box setting, in which the attacker has access to the defender's model and experiences. Two games are played; in the first game, DDQN is a defender and N2D is an attacker, and in second game, the roles are reversed. The games are played twice; first, without an active causative attack and secondly, with an active causative attack. For execution, three sets of game results are recorded in which a single set consists of 10 game runs. The before and after results are then compared in order to see if there was actually an improvement or degradation. The results show that with minute parameter changes made to the algorithms, there was growth in the attacker's role, since it is able to win games. Implementation of the adversarial learning by the introduction of the causative attack showed the algorithms are still able to defend the network according to their strengths.

READ FULL TEXT
research
09/03/2022

Model-Free Deep Reinforcement Learning in Software-Defined Networks

This paper compares two deep reinforcement learning approaches for cyber...
research
02/25/2019

Adversarial Reinforcement Learning under Partial Observability in Software-Defined Networking

Recent studies have demonstrated that reinforcement learning (RL) agents...
research
04/16/2018

Towards Robust Monitoring of Stealthy Diffusion

In this work, we introduce and study the (α, β)-Monitoring game on netwo...
research
07/12/2020

Adversarial jamming attacks and defense strategies via adaptive deep reinforcement learning

As the applications of deep reinforcement learning (DRL) in wireless com...
research
11/06/2018

Deep Reinforcement Learning for Green Security Games with Real-Time Information

Green Security Games (GSGs) have been proposed and applied to optimize p...
research
05/27/2020

The Adversarial Resilience Learning Architecture for AI-based Modelling, Exploration, and Operation of Complex Cyber-Physical Systems

Modern algorithms in the domain of Deep Reinforcement Learning (DRL) dem...
research
12/07/2020

Deep Policy Networks for NPC Behaviors that Adapt to Changing Design Parameters in Roguelike Games

Recent advances in Deep Reinforcement Learning (DRL) have largely focuse...

Please sign up or login with your details

Forgot password? Click here to reset