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Journal : Journal of Information Technology and Cyber Security

Supervised Learning Methods Comparison for Android Malware Detection Based on System Calls Referring to ARM (32-bit/EABI) Table Alhamri, Rinanza Zulmy; Cinderatama, Toga Aldila; Eliyen, Kunti; Izzah, Abidatul
Journal of Information Technology and Cyber Security Vol. 2 No. 1 (2024): January
Publisher : Department of Information Systems and Technology, Faculty of Intelligent Electrical and Informatics Technology, Universitas 17 Agustus 1945 Surabaya

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.30996/jitcs.10511

Abstract

Android malware detection research is a topic that is still being developed. From all the detection techniques developed, dynamic analysis methods have become interesting because they trace the suspect application system calls. Based on the system calls, by utilizing machine learning, the suspect application can be classified as malware or benign. Comparing the machine learning methods is im-portant to determine what method is best to support malware detection. This article aims to explain more clearly and simply the way to conduct Android malware detection based on system calls step by step using classification. Furthermore, it presents the system calls sequence conversion referring to the arm(32-bit/EABI) table, which has 398 system calls (0-397) as features. It will provide a compari-son of several supervised machine-learning methods for classifying Android applications. This initial research is part of the other research that has the purpose of developing a malware detection system based on an Android application. This research can be used to develop the best machine learning to classify malware applications using a Support Vector Machine (SVM), Decision Tree (DT), K-Nearest Neighbour (KNN), and Naive Bayes (NB). The result can be concluded that the KNN method has the lowest performance in detecting Android malware apps, with an accuracy of only 0.50. In comparison, the NB method has an accuracy of only 0,69. SVM and DT models have similar accuracy and recall results of 0.79 and 0.75, respectively, but DT obtained higher precision and scores of 0.83 and 0.76, respectively. Although in this study, the classification performance of DT is better than SVM, based on comparison with the results of previous research, SVM is a suitable method for Android malware de-tection based on system calls. It is proven by the results of research comparisons that the SVM method is always the method with the highest accuracy score among other methods. For the next research, the SVM method can be used to develop a malware detection system for Android applications.
Co-Authors Abidatul Izzah Agustono Heriadi Agustono Heriadi Agustono Heriadi, Agustono Ahmad Athoillah Saifi Amini, Julia Intan Andika Kurnia Adi Pradana Arif, Hamdani Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta Ashafidz Fauzan Dianta, Ashafidz Fauzan Asmoro, Wiwiek Kusumaning Astiningrum, Mungki Atik Tri Andari Atik Tri Andari, Atik Tri Atiqah Nurul Asri Ayundyayasti, Prima Benni Agung Nugroho Benni Agung Nugroho Benni Agung Nugroho Benni Agung Nugroho, Benni Agung Budiprasetyo, Gunawan Candra Bella Vista Devianti, Meryta Dewi, Isyana Wikrama Dharma Tungga Dina Yeni Martia Eka Apriani, Meyti Eliyen, Kunti Ellya Nurfarida Ellya Nurfarida, Ellya Elok Nur Hamdana Fadelis Sukya Fadelis Sukya Fadelis Sukya, Fadelis Fajria, Rola Nurul Fariez Ilham Alviansyah Fery Sofian Efendi Fery Sofian Efendi Fery Sofian Efendi Fery Sofian Efendi Fery Sofian Efendi Fery Sofian Efendi Fery Sofian Effendi Fery Sofian Effendi Fitria Nur Hamidah, Fitria Nur Gunawan Budiprasetyo Hadi Rahmad Hamdani Arif Hendrawan, Muhammad Afif Irfin Sandra Asti junaedi adi prasetyo Junaedi Adi Prasetyo Kenneth Pinandhito Kunti Eliyen Kunti Eliyen Maskur Maskur Moch Zawaruddin Abdullah Nugraha, Girindra Fajar Nugroho , Benni Agung Prasetyo, Junaedi Adi Prasetyo, Junaedi Adi Putranti, Eti Rahmad Aliy Cagar Wahyu Aji Ratna Widyastuti, Ratna Renaldi, Rasyed Rinanza Zulmy Alhamri, Rinanza Zulmy Riswan Eko Wahyu Susanto Riswan Eko Wahyu Susanto, Riswan Eko Wahyu Rudy Ariyanto Setianingsih, Novie Astuti Sofian Efendi, Fery Trisha Alfandi Wahyu, Mujahid Windawati, Atif Yan Watequlis Syaifudin Yanuarmawan, Dion Yohan Bakhtiar Yoppy Yunhasnawa Yuri Arianto Yuri Ariyanto Zulmy Alhamri, Rinanza