Title of article
Android Malware Category and Family Identification Using Parallel Machine Learning
Author/Authors
El Fiky, Ahmed Hashem Department of Systems and Computers Engineering - Faculty of Engineering Al-Azhar University, Cairo, Egypt , Madkour, Mohamed Ashraf Department of Systems and Computers Engineering - Faculty of Engineering Al-Azhar University, Cairo, Egypt , El Shenawy, Ayman Department of Systems and Computers Engineering - Faculty of Engineering Al- Azhar University, Cairo, Egypt
Pages
21
From page
19
To page
39
Abstract
Android malware is one of the most dangerous threats on the Internet. It has been on the rise
for several years. As a result, it has impacted many applications such as healthcare, banking,
transportation, government, e-commerce, etc. One of the most growing attacks is on Android
systems due to its use in many devices worldwide. De-spite significant efforts in detecting
and classifying Android malware, there is still a long way to improve the detection process
and the classification performance. There is a necessity to provide a basic understanding of
the behavior displayed by the most common Android malware categories and families.
Hence, understand the distinct ob-jective of malware after identifying their family and
category. This paper proposes an effective systematic and functional parallel machine-
learning model for the dynamic detection of Android malware categories and families.
Standard machine learning classifiers are implemented to analyze a massive malware dataset
with 14 major mal-ware categories and 180 prominent malware families of the CCCS-CIC-
AndMal2020 on dynamic layers to detect Android malware categories and families. The
paper ex-periments with many machine learning algorithms and compares the proposed
model with the most recent related work. The results indicate more than 96 % accuracy for
Android Malware Category detection and more than 99% for Android Malware family detection overperforming the current related methods. The proposed model offers a highly
accurate method for dynamic analysis of Android malware that cuts down the time required to
analyze smartphone malware.
Keywords
Android Malware , Malware Analysis , Malware Category Classification , Malware Family Classification , Malware Dynamic Analysis
Journal title
Journal of Information Technology Management (JITM)
Serial Year
2022
Record number
2733217
Link To Document