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

被引:12
作者
He, Zhangying [1 ]
Rezaei, Amin [1 ]
Homayoun, Houman [2 ]
Sayadi, Hossein [1 ]
机构
[1] Calif State Univ, Long Beach, CA 90032 USA
[2] Univ Calif Davis, Davis, CA 95616 USA
来源
PROCEEDINGS OF THE 32ND GREAT LAKES SYMPOSIUM ON VLSI 2022, GLSVLSI 2022 | 2022年
关键词
Deep Learning; Hardware-Based Malware Detection; Machine Learning; Transfer Learning; Zero-Day Attack;
D O I
10.1145/3526241.3530326
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
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.
引用
收藏
页码:27 / 32
页数:6
相关论文
共 50 条
[1]   Deep Learning for Zero-day Malware Detection and Classification: A Survey [J].
Deldar, Fatemeh ;
Abadi, Mahdi .
ACM COMPUTING SURVEYS, 2024, 56 (02)
[2]   Zero-Day Malware Detection [J].
Gandotra, Ekta ;
Bansal, Divya ;
Sofat, Sanjccv .
2016 SIXTH INTERNATIONAL SYMPOSIUM ON EMBEDDED COMPUTING AND SYSTEM DESIGN (ISED 2016), 2016, :171-175
[3]   Zero-Day Malware Classification and Detection Using Machine Learning [J].
Kumar J. ;
Rajendran B. ;
Sudarsan S.D. .
SN Computer Science, 5 (1)
[4]   Deep transductive transfer learning framework for zero-day attack detection [J].
Sameera, Nerella ;
Shashi, M. .
ICT EXPRESS, 2020, 6 (04) :361-367
[5]   Multi-view deep learning for zero-day Android malware detection [J].
Millar, Stuart ;
McLaughlin, Niall ;
del Rincon, Jesus Martinez ;
Miller, Paul .
JOURNAL OF INFORMATION SECURITY AND APPLICATIONS, 2021, 58
[6]   Zero-day malware detection using transferred generative adversarial networks based on deep autoencoders [J].
Kim, Jin-Young ;
Bu, Seok-Jun ;
Cho, Sung-Bae .
INFORMATION SCIENCES, 2018, 460 :83-102
[7]   Network Behavioral Analysis for Zero-Day Malware Detection - A Case Study [J].
Ganame, Karim ;
Allaire, Marc Andre ;
Zagdene, Ghassen ;
Boudar, Oussama .
INTELLIGENT, SECURE, AND DEPENDABLE SYSTEMS IN DISTRIBUTED AND CLOUD ENVIRONMENTS (ISDDC 2017), 2017, 10618 :169-181
[8]   Big Data Framework for Zero-Day Malware Detection [J].
Gupta, Deepak ;
Rani, Rinkle .
CYBERNETICS AND SYSTEMS, 2018, 49 (02) :103-121
[9]   Guarding Against the Unknown: Deep Transfer Learning for Hardware Image-Based Malware Detection [J].
Zhangying He ;
Houman Homayoun ;
Hossein Sayadi .
Journal of Hardware and Systems Security, 2024, 8 (2) :61-78
[10]   Breakthrough to Adaptive and Cost-Aware Hardware-Assisted Zero-Day Malware Detection: A Reinforcement Learning-Based Approach [J].
He, Zhangying ;
Makrani, Hosein Mohammadi ;
Rafatirad, Setareh ;
Homayoun, Houman ;
Sayadi, Hossein .
2022 IEEE 40TH INTERNATIONAL CONFERENCE ON COMPUTER DESIGN (ICCD 2022), 2022, :231-238