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Using deep learning to solve computer security challenges: a survey

Yoon-Ho Choi, Peng Liu, Zitong Shang, Haizhou Wang, Zhilong Wang, Lan Zhang, Junwei Zhou, Qingtian Zou

2020Cybersecurity42 citationsDOIOpen Access PDF

Abstract

Abstract Although using machine learning techniques to solve computer security challenges is not a new idea, the rapidly emerging Deep Learning technology has recently triggered a substantial amount of interests in the computer security community. This paper seeks to provide a dedicated review of the very recent research works on using Deep Learning techniques to solve computer security challenges. In particular, the review covers eight computer security problems being solved by applications of Deep Learning: security-oriented program analysis, defending return-oriented programming (ROP) attacks, achieving control-flow integrity (CFI), defending network attacks, malware classification, system-event-based anomaly detection, memory forensics, and fuzzing for software security.

Topics & Concepts

Computer scienceMalwareComputer securityDeep learningSoftware security assuranceNetwork securityComputer security modelAnomaly detectionFuzz testingArtificial intelligenceInformation securitySoftwareSecurity serviceOperating systemNetwork Security and Intrusion DetectionAdvanced Malware Detection TechniquesSoftware System Performance and Reliability
Using deep learning to solve computer security challenges: a survey | Litcius