Deep Neural Network and Transfer Learning for Accurate Hardware-Based Zero-Day Malware Detection


연구 분야: Strategies



학회: GLSVLSI '22: Proceedings of the Great Lakes Symposium on VLSI 2022


초록

In recent years, security researchers have shifted their attentions to the underlying processors' architecture and proposed Hardware-Based Malware Detection (HMD) countermeasures to address inefficiencies of software-based detection methods. HMD techniques apply standard Machine Learning (ML) algorithms to the processors' low-level events collected from Hardware Performance Counter (HPC) registers. However, despite obtaining promising results for detecting known malware, the challenge of accurate zero-day (unknown) malware detection has remained an unresolved problem in existing HPC-based countermeasures. Our comprehensive analysis shows that standard ML classifiers are not effective in recognizing zero-day malware traces using HPC events. In response, we propose Deep-HMD, a two-stage intelligent and flexible approach based on deep neural network and transfer learning, for accurate zero-day malware detection based on image-based hardware events. The experimental results indicate that our proposed solution outperforms existing ML-based methods by achieving a 97% detection rate (F-Measure and Area Under the Curve) for detecting zero-day malware signatures at run-time using the top 4 hardware events with a minimal false positive rate and no hardware redesign overhead.


Author Profile
Zhangying He

California State University Long Beach Long Beach CA USA

Canada
Author Profile
Amin Rezaei

California State University Long Beach Long Beach CA USA

Canada
Author Profile
Houman Homayoun

University of California Davis Davis CA USA

Canada

📄 논문 정보

발행 연도 2022년
인용수 18
출판 국가 Canada
사이트 ACM
좋아요 수 0

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