Dynamic Detection of Mobile Malware Using Smartphone Data and Machine Learning

被引:0
|
作者
de Wit, J. S. Panman [1 ]
Bucur, D. [1 ]
van der Ham, J. [1 ,2 ]
机构
[1] Univ Twente, Drienerlolaan 5, NL-7522 NB Enschede, Netherlands
[2] NCSC NL, The Hague, Netherlands
来源
关键词
Machine learning; sensor data; smartphones; classification;
D O I
10.1145/3484246
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 malware are malicious programs that target mobile devices. They are an increasing problem, as seen with the rise of detected mobile malware samples per year. The number of active smartphone users is expected to grow, stressing the importance of research on the detection of mobile malware. Detection methods for mobile malware exist but are still limited. In this article, we provide an overview of the performance of machine learning (ML) techniques to detect malware on Android, without using privileged access. The ML-classifiers use device information such as the CPU usage, battery usage, and memory usage for the detection of 10 subtypes of Mobile Trojans on the Android Operating System. We use a real-life dataset containing device and malware data from 47 users for a year (2016). We examine which features, i.e., aspects, of a device, are most important to monitor to detect (subtypes of) Mobile Trojans. The focus of this article is on dynamic hardware features. Using these dynamic features we apply state-of-the-art machine learning classifiers: Random Forest, K-Nearest Neighbour, and AdaBoost. We show classification results on different feature sets, making a distinction between global device features, and specific app features. None of the measured feature sets require privileged access. Our results show that the Random Forest classifier performs best as a general malware classifier: across 10 subtypes of Mobile Trojans, it achieves an F1 score of 0.73 with a False Positive Rate (FPR) of 0.009 and a False Negative Rate (FNR) of 0.380. The Random Forest, K-Nearest Neighbours, and AdaBoost classifiers achieve F1 scores above 0.72, an FPR below 0.02 and, an FNR below 0.33, when trained separately to detect each subtype of Mobile Trojans.
引用
下载
收藏
页数:24
相关论文
共 50 条
  • [1] A Survey on Mobile Malware Detection Methods using Machine Learning
    Kambar, Mina Esmail Zadeh Nojoo
    Esmaeilzadeh, Armin
    Kim, Yoohwan
    Taghva, Kazem
    2022 IEEE 12TH ANNUAL COMPUTING AND COMMUNICATION WORKSHOP AND CONFERENCE (CCWC), 2022, : 215 - 221
  • [2] High Accuracy Detection of Mobile Malware Using Machine Learning
    Yerima, Suleiman Y.
    ELECTRONICS, 2023, 12 (06)
  • [3] Malware Detection in Android Mobile Platform using Machine Learning Algorithms
    Al Ali, Mariam
    Svetinovic, Davor
    Aung, Zeyar
    Lukman, Suryani
    2017 INTERNATIONAL CONFERENCE ON INFOCOM TECHNOLOGIES AND UNMANNED SYSTEMS (TRENDS AND FUTURE DIRECTIONS) (ICTUS), 2017, : 763 - 768
  • [4] Android Mobile Malware Detection Using Machine Learning: A Systematic Review
    Senanayake, Janaka
    Kalutarage, Harsha
    Al-Kadri, Mhd Omar
    ELECTRONICS, 2021, 10 (13)
  • [5] Intelligent Dynamic Malware Detection using Machine Learning in IP Reputation for Forensics Data Analytics
    Usman, Nighat
    Usman, Saeeda
    Khan, Fazlullah
    Jan, Mian Ahmad
    Sajid, Ahthasham
    Alazab, Mamoun
    Watters, Paul
    FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2021, 118 : 124 - 141
  • [6] Malware Detection Using Machine Learning
    Kumar, Ajay
    Abhishek, Kumar
    Shah, Kunjal
    Patel, Divy
    Jain, Yash
    Chheda, Harsh
    Nerurka, Pranav
    KNOWLEDGE GRAPHS AND SEMANTIC WEB, KGSWC 2020, 2020, 1232 : 61 - 71
  • [7] Evaluation of machine learning classifiers for mobile malware detection
    Fairuz Amalina Narudin
    Ali Feizollah
    Nor Badrul Anuar
    Abdullah Gani
    Soft Computing, 2016, 20 : 343 - 357
  • [8] Evaluation of machine learning classifiers for mobile malware detection
    Narudin, Fairuz Amalina
    Feizollah, Ali
    Anuar, Nor Badrul
    Gani, Abdullah
    SOFT COMPUTING, 2016, 20 (01) : 343 - 357
  • [9] Machine-Learning Classifiers for Malware Detection Using Data Features
    Habtor, Saleh Abdulaziz
    Dahah, Ahmed Haidarah Hasan
    JOURNAL OF ICT RESEARCH AND APPLICATIONS, 2021, 15 (03) : 265 - 290
  • [10] A cost analysis of machine learning using dynamic runtime opcodes for malware detection
    Carlin, Domhnall
    O'Kane, Philip
    Sezer, Sakir
    COMPUTERS & SECURITY, 2019, 85 : 138 - 155