LineVD: Statement-level Vulnerability Detection using Graph Neural Networks
March 10, 2022 Β· Declared Dead Β· π IEEE Working Conference on Mining Software Repositories
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Authors
David Hin, Andrey Kan, Huaming Chen, M. Ali Babar
arXiv ID
2203.05181
Category
cs.CR: Cryptography & Security
Cross-listed
cs.SE
Citations
232
Venue
IEEE Working Conference on Mining Software Repositories
Last Checked
3 months ago
Abstract
Current machine-learning based software vulnerability detection methods are primarily conducted at the function-level. However, a key limitation of these methods is that they do not indicate the specific lines of code contributing to vulnerabilities. This limits the ability of developers to efficiently inspect and interpret the predictions from a learnt model, which is crucial for integrating machine-learning based tools into the software development workflow. Graph-based models have shown promising performance in function-level vulnerability detection, but their capability for statement-level vulnerability detection has not been extensively explored. While interpreting function-level predictions through explainable AI is one promising direction, we herein consider the statement-level software vulnerability detection task from a fully supervised learning perspective. We propose a novel deep learning framework, LineVD, which formulates statement-level vulnerability detection as a node classification task. LineVD leverages control and data dependencies between statements using graph neural networks, and a transformer-based model to encode the raw source code tokens. In particular, by addressing the conflicting outputs between function-level and statement-level information, LineVD significantly improve the prediction performance without vulnerability status for function code. We have conducted extensive experiments against a large-scale collection of real-world C/C++ vulnerabilities obtained from multiple real-world projects, and demonstrate an increase of 105\% in F1-score over the current state-of-the-art.
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