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Pro-ZD: A Transferable Graph Neural Network Approach for Proactive Zero-Day Threats Mitigation

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In today's enterprise network landscape, the combination of perimeter and distributed firewall rules governs connectivity. To address challenges arising from increased traffic and diverse network architectures, organizations employ automated tools for firewall rule and access policy generation. Yet, effectively managing risks arising from dynamically generated policies, especially concerning critical asset exposure, remains a major challenge. This challenge is amplified by evolving network structures due to trends like remote users, bring-your-own devices, and cloud integration. This paper introduces a novel graph neural network model for identifying weighted shortest paths. The model aids in detecting network misconfigurations and high-risk connectivity paths that threaten critical assets, potentially exploited in zero-day attacks -- cyber-attacks exploiting undisclosed vulnerabilities. The proposed Pro-ZD framework adopts a proactive approach, automatically fine-tuning firewall rules and access policies to address high-risk connections and prevent unauthorized access. Experimental results highlight the robustness and transferability of Pro-ZD, achieving over 95% average accuracy in detecting high-risk connections. \

Nardine Basta, Firas Ben Hmida, Houssem Jmal, Muhammad Ikram, Mohamed Ali Kaafar, Andy Walker• 2026

Related benchmarks

TaskDatasetResultRank
Edge classificationSDT2 (test)
Accuracy98.72
2
Edge classificationRTD2 (test)
Accuracy93.18
2
Weighted shortest path predictionRTD1
Accuracy83.71
2
Weighted shortest path predictionRTD2
Accuracy83.73
2
Weighted shortest path predictionSDT2 (test)
Accuracy87.5
2
Weighted shortest path predictionRTD2 (test)
Accuracy71.89
2
Weighted shortest path predictionSTD1
Accuracy87.5
2
Weighted shortest path predictionSTD2
Accuracy87.9
2
Edge classificationSTD1
Accuracy96.91
1
Edge classificationSTD2
Accuracy99.005
1
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