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Multi-View Pre-Trained Model for Code Vulnerability Identification

2022-08-10 09:00:58
Xuxiang Jiang, Yinhao Xiao, Jun Wang, Wei Zhang

Abstract

Vulnerability identification is crucial for cyber security in the software-related industry. Early identification methods require significant manual efforts in crafting features or annotating vulnerable code. Although the recent pre-trained models alleviate this issue, they overlook the multiple rich structural information contained in the code itself. In this paper, we propose a novel Multi-View Pre-Trained Model (MV-PTM) that encodes both sequential and multi-type structural information of the source code and uses contrastive learning to enhance code representations. The experiments conducted on two public datasets demonstrate the superiority of MV-PTM. In particular, MV-PTM improves GraphCodeBERT by 3.36\% on average in terms of F1 score.

Abstract (translated)

URL

https://arxiv.org/abs/2208.05227

PDF

https://arxiv.org/pdf/2208.05227.pdf


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