Using Capsule Networks for Android Malware Detection Through Orientation-Based Features

被引:2
作者
Khan, Sohail [1 ]
Nauman, Mohammad [2 ]
Alsaif, Suleiman Ali [1 ]
Syed, Toqeer Ali [3 ]
Eleraky, Hassan Ahmad [1 ]
机构
[1] Imam Abdulrahman Bin Faisal Univ, Comp Sci Dept, Deanship Preparatory Year & Supporting Studies, Dammam, Saudi Arabia
[2] Natl Univ Comp & Emerging Sci, Karachi, Pakistan
[3] Islamic Univ Medina, Dept Comp Sci, Medina, Saudi Arabia
来源
CMC-COMPUTERS MATERIALS & CONTINUA | 2022年 / 70卷 / 03期
关键词
Malware; security; Android; deep learning; capsule networks; DEEP; ARCHITECTURES;
D O I
10.32604/cmc.2022.021271
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Mobile phones are an essential part of modern life. The two popular mobile phone platforms, Android and iPhone Operating System (iOS), have an immense impact on the lives of millions of people. Among these two, Android currently boasts more than 84% market share. Thus, any personal data put on it are at great risk if not properly protected. On the other hand, more than a million pieces of malware have been reported on Android in just 2021 till date. Detecting and mitigating all this malware is extremely difficult for any set of human experts. Due to this reason, machine learning-and specifically deep learning-has been utilized in the recent past to resolve this issue. How-ever, deep learning models have primarily been designed for image analysis. While this line of research has shown promising results, it has been difficult to really understand what the features extracted by deep learning models are in the domain of malware. Moreover, due to the translation invariance property of popular models based on Convolutional Neural Network (CNN), the true potential of deep learning for malware analysis is yet to be realized. To resolve this issue, we envision the use of Capsule Networks (CapsNets), a state-of-the-art model in deep learning. We argue that since CapsNets are orientation-based in terms of images, they can potentially be used to capture spatial relationships between different features at different locations within a sequence of opcodes. We design a deep learning-based architecture that efficiently and effectively handles very large scale malware datasets to detect Android malware without resorting to very deep networks. This leads to much faster detection as well as increased accuracy. We achieve state-of-the-art F1 score of 0.987 with an FPR of just 0.002 for three very large, real-world malware datasets. Our code is made available as open source and can be used to further enhance our work with minimal effort.
引用
收藏
页码:5345 / 5362
页数:18
相关论文
共 50 条
  • [31] Mmda: Metadata based Malware Detection on Android
    Wang, Kun
    Song, Tao
    Liang, Alei
    PROCEEDINGS OF 2016 12TH INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND SECURITY (CIS), 2016, : 598 - 602
  • [32] An Android Malware Detection Approach Based on SIMGRU
    Zhou, Hanxun
    Yang, Xinlin
    Pan, Hong
    Guo, Wei
    IEEE ACCESS, 2020, 8 : 148404 - 148410
  • [33] Minimizing Network Traffic Features for Android Mobile Malware Detection
    Arora, Anshul
    Peddoju, Sateesh K.
    18TH INTERNATIONAL CONFERENCE ON DISTRIBUTED COMPUTING AND NETWORKING (ICDCN 2017), 2017,
  • [34] Experimental comparison of features, analyses, and classifiers for Android malware detection
    Lwin Khin Shar
    Biniam Fisseha Demissie
    Mariano Ceccato
    Yan Naing Tun
    David Lo
    Lingxiao Jiang
    Christoph Bienert
    Empirical Software Engineering, 2023, 28
  • [35] CNN-based Android Malware Detection
    Ganesh, Meenu
    Pednekar, Priyanka
    Prabhuswamy, Pooja
    Nair, Divyashri Sreedharan
    Park, Younghee
    Jeon, Hyeran
    PROCEEDINGS 2017 INTERNATIONAL CONFERENCE ON SOFTWARE SECURITY AND ASSURANCE (ICSSA), 2017, : 60 - 65
  • [36] Graph-Based Android Malware Detection and Categorization through BERT Transformer
    Simoni, Marco
    Saracino, Andrea
    18TH INTERNATIONAL CONFERENCE ON AVAILABILITY, RELIABILITY & SECURITY, ARES 2023, 2023,
  • [37] Android Malware Detection and Categorization Based on Conversation-level Network Traffic Features
    Abuthawabeh, Mohammad Kamel A.
    Mahmoud, Khaled W.
    2019 INTERNATIONAL ARAB CONFERENCE ON INFORMATION TECHNOLOGY (ACIT), 2019, : 42 - 47
  • [38] Android Malware Detection Based on Structural Features of the Function Call Graph
    Yang, Yang
    Du, Xuehui
    Yang, Zhi
    Liu, Xing
    ELECTRONICS, 2021, 10 (02) : 1 - 18
  • [39] DeepImageDroid: A Hybrid Framework Leveraging Visual Transformers and Convolutional Neural Networks for Robust Android Malware Detection
    Chimezie Obidiagha, Collins
    Rahouti, Mohamed
    Hayajneh, Thaier
    IEEE ACCESS, 2024, 12 : 156285 - 156306
  • [40] Using G Features to Improve the Efficiency of Function Call Graph Based Android Malware Detection
    Liu, Yu
    Zhang, Liqiang
    Huang, Xiangdong
    WIRELESS PERSONAL COMMUNICATIONS, 2018, 103 (04) : 2947 - 2955