VLAI: A RoBERTa-Based Model for Automated Vulnerability Severity Classification
VLAI: A RoBERTa-Based Model for Automated Vulnerability Severity Classification
This paper presents VLAI, a transformer-based model that predicts software vulnerability severity levels directly from text descriptions. Built on RoBERTa, VLAI is fine-tuned on over 600,000 real-world vulnerabilities and achieves over 82% accuracy in predicting severity categories, enabling faster and more consistent triage ahead of manual CVSS scoring. The model and dataset are open-source and integrated into the Vulnerability-Lookup service.
Cédric Bonhomme、Alexandre Dulaunoy
计算技术、计算机技术
Cédric Bonhomme,Alexandre Dulaunoy.VLAI: A RoBERTa-Based Model for Automated Vulnerability Severity Classification[EB/OL].(2025-07-04)[2025-07-17].https://arxiv.org/abs/2507.03607.点此复制
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