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An Accurate and Efficient Vulnerability Propagation Analysis Framework

2 June 2025
Bonan Ruan
Zhiwei Lin
Jiahao Liu
Chuqi Zhang
Kaihang Ji
Zhenkai Liang
ArXiv (abs)PDFHTML
Main:10 Pages
9 Figures
Bibliography:2 Pages
2 Tables
Abstract

Identifying the impact scope and scale is critical for software supply chain vulnerability assessment. However, existing studies face substantial limitations. First, prior studies either work at coarse package-level granularity, producing many false positives, or fail to accomplish whole-ecosystem vulnerability propagation analysis. Second, although vulnerability assessment indicators like CVSS characterize individual vulnerabilities, no metric exists to specifically quantify the dynamic impact of vulnerability propagation across software supply chains. To address these limitations and enable accurate and comprehensive vulnerability impact assessment, we propose a novel approach: (i) a hierarchical worklist-based algorithm for whole-ecosystem and call-graph-level vulnerability propagation analysis and (ii) the Vulnerability Propagation Scoring System (VPSS), a dynamic metric to quantify the scope and evolution of vulnerability impacts in software supply chains. We implement a prototype of our approach in the Java Maven ecosystem and evaluate it on 100 real-world vulnerabilities. Experimental results demonstrate that our approach enables effective ecosystem-wide vulnerability propagation analysis, and provides a practical, quantitative measure of vulnerability impact through VPSS.

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@article{ruan2025_2506.01342,
  title={ An Accurate and Efficient Vulnerability Propagation Analysis Framework },
  author={ Bonan Ruan and Zhiwei Lin and Jiahao Liu and Chuqi Zhang and Kaihang Ji and Zhenkai Liang },
  journal={arXiv preprint arXiv:2506.01342},
  year={ 2025 }
}
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