E-GVD: Efficient Software Vulnerability Detection Techniques Based on Graph Neural Network

Haiye Wang, Zhiguo Qu, Le Sun
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Abstract

INTRODUCTION: Vulnerability detection is crucial for preventing severe security incidents like hacker attacks, data breaches, and network paralysis. Traditional methods, however, face challenges such as low efficiency and insufficient detail in identifying code vulnerabilities. OBJECTIVES: This paper introduces E-GVD, an advanced method for source code vulnerability detection, aiming to address the limitations of existing methods. The objective is to enhance the accuracy of function-level vulnerability detection and provide detailed, understandable insights into the vulnerabilities. METHODS: E-GVD combines Graph Neural Networks (GNNs), which are adept at handling graph-structured data, with residual connections and advanced Programming Language (PL) pre-trained models. RESULTS: Experiments conducted on the real-world vulnerability dataset CodeXGLUE show that E-GVD significantly outperforms existing baseline methods in detecting vulnerabilities. It achieves a maximum accuracy gain of 4.98%, indicating its effectiveness over traditional methods. CONCLUSION: E-GVD not only improves the accuracy of vulnerability detection but also contributes by providing fine-grained explanations. These explanations are made possible through an interpretable Machine Learning (ML) model, which aids developers in quickly and efficiently repairing vulnerabilities, thereby enhancing overall software security.
E-GVD:基于图神经网络的高效软件漏洞检测技术
简介:漏洞检测对于防止黑客攻击、数据泄露和网络瘫痪等严重安全事件至关重要。然而,传统方法在识别代码漏洞时面临效率低、细节不足等挑战。目标本文介绍一种先进的源代码漏洞检测方法 E-GVD,旨在解决现有方法的局限性。其目的是提高函数级漏洞检测的准确性,并提供详细、易懂的漏洞洞察。方法:E-GVD 结合了善于处理图结构数据的图神经网络 (GNN)、残差连接和高级编程语言 (PL) 预训练模型。结果:在真实世界的漏洞数据集 CodeXGLUE 上进行的实验表明,E-GVD 在检测漏洞方面明显优于现有的基线方法。它的最大准确率提高了 4.98%,表明它比传统方法更有效。结论:E-GVD 不仅能提高漏洞检测的准确性,还能提供细粒度的解释。这些解释是通过可解释的机器学习(ML)模型实现的,可帮助开发人员快速、高效地修复漏洞,从而提高软件的整体安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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