A Game-Theoretical Self-Adaptation Framework for Securing Software-Intensive Systems
Mingyue Zhang, Nianyu Li, Sridhar Adepu, Eunsuk Kang, Zhi Jin

TL;DR
This paper introduces a game-theoretical framework for securing software-intensive systems, utilizing self-adaptation, attack detection, and Bayesian game modeling to optimize defense strategies against security threats.
Contribution
It presents a novel self-adaptation framework that integrates attack detection, threat prediction, and Bayesian game modeling for automated defense in software systems.
Findings
Effective attack detection and threat prediction demonstrated.
Bayesian game approach improves defense strategy optimization.
Validated on benchmark tasks and a real-world water treatment system.
Abstract
The increasing prevalence of security attacks on software-intensive systems calls for new, effective methods for detecting and responding to these attacks. As one promising approach, game theory provides analytical tools for modeling the interaction between the system and the adversarial environment and designing reliable defense. In this paper, we propose an approach for securing software-intensive systems using a rigorous game-theoretical framework. First, a self-adaptation framework is deployed on a component-based software intensive system, which periodically monitors the system for anomalous behaviors. A learning-based method is proposed to detect possible on-going attacks on the system components and predict potential threats to components. Then, an algorithm is designed to automatically build a \emph{Bayesian game} based on the system architecture (of which some components might…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Network Security and Intrusion Detection · Smart Grid Security and Resilience
