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Main Authors: Tian, Bowen, Xu, Zhengyang, Wu, Mingqiang, Lai, Songning, Yue, Yutai
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.10988
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author Tian, Bowen
Xu, Zhengyang
Wu, Mingqiang
Lai, Songning
Yue, Yutai
author_facet Tian, Bowen
Xu, Zhengyang
Wu, Mingqiang
Lai, Songning
Yue, Yutai
contents With the pervasive integration of computer applications across industries, the presence of vulnerabilities within code bases poses significant risks. The diversity of software ecosystems coupled with the intricate nature of modern software engineering has led to a shift from manual code vulnerability identification towards the adoption of automated tools. Among these, deep learning-based approaches have risen to prominence due to their superior accuracy; however, these methodologies encounter several obstacles. Primarily, they necessitate extensive labeled datasets and prolonged training periods, and given the rapid emergence of new vulnerabilities, the frequent retraining of models becomes a resource-intensive endeavor, thereby limiting their applicability in cutting-edge scenarios. To mitigate these challenges, this paper introduces the \underline{\textbf{YOTO}}--\underline{\textbf{Y}}ou \underline{\textbf{O}}nly \underline{\textbf{T}}rain \underline{\textbf{O}}nce framework. This innovative approach facilitates the integration of multiple types of vulnerability detection models via parameter fusion, eliminating the need for joint training. Consequently, YOTO enables swift adaptation to newly discovered vulnerabilities, significantly reducing both the time and computational resources required for model updates.
format Preprint
id arxiv_https___arxiv_org_abs_2506_10988
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle You Only Train Once: A Flexible Training Framework for Code Vulnerability Detection Driven by Vul-Vector
Tian, Bowen
Xu, Zhengyang
Wu, Mingqiang
Lai, Songning
Yue, Yutai
Software Engineering
Machine Learning
With the pervasive integration of computer applications across industries, the presence of vulnerabilities within code bases poses significant risks. The diversity of software ecosystems coupled with the intricate nature of modern software engineering has led to a shift from manual code vulnerability identification towards the adoption of automated tools. Among these, deep learning-based approaches have risen to prominence due to their superior accuracy; however, these methodologies encounter several obstacles. Primarily, they necessitate extensive labeled datasets and prolonged training periods, and given the rapid emergence of new vulnerabilities, the frequent retraining of models becomes a resource-intensive endeavor, thereby limiting their applicability in cutting-edge scenarios. To mitigate these challenges, this paper introduces the \underline{\textbf{YOTO}}--\underline{\textbf{Y}}ou \underline{\textbf{O}}nly \underline{\textbf{T}}rain \underline{\textbf{O}}nce framework. This innovative approach facilitates the integration of multiple types of vulnerability detection models via parameter fusion, eliminating the need for joint training. Consequently, YOTO enables swift adaptation to newly discovered vulnerabilities, significantly reducing both the time and computational resources required for model updates.
title You Only Train Once: A Flexible Training Framework for Code Vulnerability Detection Driven by Vul-Vector
topic Software Engineering
Machine Learning
url https://arxiv.org/abs/2506.10988