Are Latent Vulnerabilities Hidden Gems for Software Vulnerability Prediction? An Empirical Study
January 20, 2024 Β· Declared Dead Β· π IEEE Working Conference on Mining Software Repositories
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Authors
Triet H. M. Le, Xiaoning Du, M. Ali Babar
arXiv ID
2401.11105
Category
cs.SE: Software Engineering
Cross-listed
cs.CR,
cs.LG
Citations
13
Venue
IEEE Working Conference on Mining Software Repositories
Last Checked
4 months ago
Abstract
Collecting relevant and high-quality data is integral to the development of effective Software Vulnerability (SV) prediction models. Most of the current SV datasets rely on SV-fixing commits to extract vulnerable functions and lines. However, none of these datasets have considered latent SVs existing between the introduction and fix of the collected SVs. There is also little known about the usefulness of these latent SVs for SV prediction. To bridge these gaps, we conduct a large-scale study on the latent vulnerable functions in two commonly used SV datasets and their utilization for function-level and line-level SV predictions. Leveraging the state-of-the-art SZZ algorithm, we identify more than 100k latent vulnerable functions in the studied datasets. We find that these latent functions can increase the number of SVs by 4x on average and correct up to 5k mislabeled functions, yet they have a noise level of around 6%. Despite the noise, we show that the state-of-the-art SV prediction model can significantly benefit from such latent SVs. The improvements are up to 24.5% in the performance (F1-Score) of function-level SV predictions and up to 67% in the effectiveness of localizing vulnerable lines. Overall, our study presents the first promising step toward the use of latent SVs to improve the quality of SV datasets and enhance the performance of SV prediction tasks.
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