CRLGNIApr 20

Dynamic Risk Assessment by Bayesian Attack Graphs and Process Mining

arXiv:2604.180803.5h-index: 7
AI Analysis

For cybersecurity practitioners, this provides a dynamic risk assessment method that updates in real-time based on network behavior, improving over static attack graphs.

The paper combines Bayesian Attack Graphs with process mining to dynamically assess the likelihood of vulnerability exploitation and system compromise. Applied to a testbed with multiple CVEs, the method effectively detects active exploitation and updates risk probabilities.

While attack graphs are useful for identifying major cybersecurity threats affecting a system, they do not provide operational support for determining the likelihood of having a known vulnerability exploited, or that critical system nodes are likely to be compromised. In this paper, we perform dynamic risk assessment by combining Bayesian Attack Graphs (BAGs) and online monitoring of system behavior through process mining. Specifically, the proposed approach applies process mining techniques to characterize malicious network traffic and derive evidence regarding the probability of having a vulnerability actively exploited. This evidence is then provided to a BAG, which updates its conditional probability tables accordingly, enabling dynamic assessment of vulnerability exploitation. We apply our method to a cybersecurity testbed instantiating several machines deployed on different subnets and affected by several CVE vulnerabilities. The testbed is stimulated with both benign traffic and malicious behavior, which simulates network attack patterns aimed at exploiting the CVE vulnerabilities. The results indicate that our proposal effectively detects whether vulnerabilities are being actively exploited, allowing for an updated assessment of the probability of system compromise.

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