Designing Robust Cyber-Defense Agents with Evolving Behavior Trees
Nicholas Potteiger, Ankita Samaddar, Hunter Bergstrom, Xenofon, Koutsoukos

TL;DR
This paper introduces Evolving Behavior Trees (EBTs) for designing autonomous cyber-defense agents that are robust, interpretable, and adaptable to cyber-attacks, combining learning-enabled components with modular behavior structures.
Contribution
The paper presents a novel method for constructing cyber-defense agents using Evolving Behavior Trees, integrating structure learning and component optimization for robustness and interpretability.
Findings
EBT-based agents effectively mitigate cyber threats in simulations.
The approach enhances network visibility and interpretability of agent decisions.
Agents demonstrate robustness against adaptive cyber-attacks.
Abstract
Modern network defense can benefit from the use of autonomous systems, offloading tedious and time-consuming work to agents with standard and learning-enabled components. These agents, operating on critical network infrastructure, need to be robust and trustworthy to ensure defense against adaptive cyber-attackers and, simultaneously, provide explanations for their actions and network activity. However, learning-enabled components typically use models, such as deep neural networks, that are not transparent in their high-level decision-making leading to assurance challenges. Additionally, cyber-defense agents must execute complex long-term defense tasks in a reactive manner that involve coordination of multiple interdependent subtasks. Behavior trees are known to be successful in modelling interpretable, reactive, and modular agent policies with learning-enabled components. In this…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques · Information and Cyber Security
