Journal article
A Performance-Sensitive Malware Detection System Using Deep Learning on Mobile Devices
IEEE transactions on information forensics and security, Vol.16, pp.1563-1578
23/09/2020
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Abstract
Currently, Android malware detection is mostly performed on server side against the increasing number of malware. Powerful computing resource provides more exhaustive protection for app markets than maintaining detection by a single user. However, apart from the applications (apps) provided by the official market (i.e., Google Play Store), apps from unofficial markets and third-party resources are always causing serious security threats to end-users. Meanwhile, it is a time-consuming task if the app is downloaded first and then uploaded to the server side for detection, because the network transmission has a lot of overhead. In addition, the uploading process also suffers from the security threats of attackers. Consequently, a last line of defense on mobile devices is necessary and much-needed. In this paper, we propose an effective Android malware detection system, MobiTive, leveraging customized deep neural networks to provide a real-time and responsive detection environment on mobile devices. MobiTive is a pre-installed solution rather than an app scanning and monitoring engine using after installation, which is more practical and secure. Although a deep learning-based approach can be maintained on server side efficiently for malware detection, original deep learning models cannot be directly deployed and executed on mobile devices due to various performance limitations, such as computation power, memory size, and energy. Therefore, we evaluate and investigate the following key points: (1) the performance of different feature extraction methods based on source code or binary code; (2) the performance of different feature type selections for deep learning on mobile devices; (3) the detection accuracy of different deep neural networks on mobile devices; (4) the real-time detection performance and accuracy on different mobile devices; (5) the potential based on the evolution trend of mobile devices' specifications; and finally we further propose a practical solution (MobiTive) to detect Android malware on mobile devices.
Details
- Title
- A Performance-Sensitive Malware Detection System Using Deep Learning on Mobile Devices
- Creators
- Ruitao Feng - Nanyang Technological UniversitySen Chen - Tianjin UniversityXiaofei Xie - Nanyang Technological UniversityGuozhu Meng - Institute of Information EngineeringShang-Wei Lin - Nanyang Technological UniversityYang Liu - Nanyang Technological University
- Publication Details
- IEEE transactions on information forensics and security, Vol.16, pp.1563-1578
- Publisher
- IEEE
- Grant note
- RF2018 NCR-NCR005-0001 / National Research Foundation, Prime Ministers Office, Singapore through its National Cybersecurity Research and Development Program (10.13039/501100001381) 2018-T1-002-069 / Singapore Ministry of Education Academic Research Fund Tier 1 (10.13039/501100001459) NRFI06-2020-0022 / NRF Investigatorship NRF2018NCR-NSOE004-0001 / National Research Foundation, Prime Ministers Office, Singapore through NCR (10.13039/501100001381) NVIDIA AI Tech Center (NVAITC) (10.13039/100007065) NSOE003-0001 / Singapore National Research Foundation through NCR (10.13039/100004720) 61902395 / National Natural Science Foundation of China (10.13039/501100001809)
- Identifiers
- 991013214583002368
- Academic Unit
- Information Technology; Faculty of Science and Engineering
- Language
- English
- Resource Type
- Journal article