Combining Graph-Based Learning With Automated Data Collection for Code Vulnerability Detection 论文

2020IEEE Transactions on Information Forensics and Security引用 304
Software Engineering ResearchAdvanced Malware Detection TechniquesSoftware Reliability and Analysis Research

详细信息

发表期刊/会议
IEEE Transactions on Information Forensics and Security
发表日期
2020-12-14
发表年份
2020

关键词

Software Engineering ResearchAdvanced Malware Detection TechniquesSoftware Reliability and Analysis Research

摘要

This paper presents FUNDED (Flow-sensitive vUl-Nerability coDE Detection), a novel learning framework for building vulnerability detection models. Funded leverages the advances in graph neural networks (GNNs) to develop a novel graph-based learning method to capture and reason about the program's control, data, and call dependencies. Unlike prior work that treats the program as a sequential sequence or an untyped graph, Funded learns and operates on a graph representation of the program source code, in which individual statements are connected to other statements through relational edges. By capturing the program syntax, semantics and flows, Funded finds better code representation for the downstream software vulnerability detection task. To provide sufficient training data to build an effective deep learning model, we combine probabilistic learning and statistical assessments to automatically gather high-quality training samples from open-source projects. This provides many real-life vulnerable code training samples to complement the limited vulnerable code samples available in standard vulnerability databases. We apply Funded to identify software vulnerabilities at the function level from program source code. We evaluate Funded on large real-world datasets with programs written in C, Java, Swift and Php, and compare it against six state-of-the-art code vulnerability detection models. Experimental results show that Funded significantly outperforms alternative approaches across evaluation settings.