Software Vulnerability Detection Using Deep Neural Networks: A Survey 论文

2020Proceedings of the IEEE引用 434
Software Engineering ResearchAdvanced Malware Detection TechniquesSoftware Reliability and Analysis Research

详细信息

发表期刊/会议
Proceedings of the IEEE
发表日期
2020-06-04
发表年份
2020

关键词

Software Engineering ResearchAdvanced Malware Detection TechniquesSoftware Reliability and Analysis Research

摘要

The constantly increasing number of disclosed security vulnerabilities have become an important concern in the software industry and in the field of cybersecurity, suggesting that the current approaches for vulnerability detection demand further improvement. The booming of the open-source software community has made vast amounts of software code available, which allows machine learning and data mining techniques to exploit abundant patterns within software code. Particularly, the recent breakthrough application of deep learning to speech recognition and machine translation has demonstrated the great potential of neural models’ capability of understanding natural languages. This has motivated researchers in the software engineering and cybersecurity communities to apply deep learning for learning and understanding vulnerable code patterns and semantics indicative of the characteristics of vulnerable code. In this survey, we review the current literature adopting deep-learning-/neural-network-based approaches for detecting software vulnerabilities, aiming at investigating how the state-of-the-art research leverages neural techniques for learning and understanding code semantics to facilitate vulnerability discovery. We also identify the challenges in this new field and share our views of potential research directions.