Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi

Android devices are becoming increasingly popular and there are more threats to Android users because malware writers are shifting their focus to exploiting vulnerabilities of Android devices for malicious behaviour. This paper will study Android malware detection using a deep learning classificatio...

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Main Authors: Amri, Nur Amirah, Mohd Fuzi, Mohd Faris
Format: Book Section
Language:English
Published: College of Computing, Informatics and Media, UiTM Perlis 2023
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Online Access:https://ir.uitm.edu.my/id/eprint/100829/1/100829.pdf
https://ir.uitm.edu.my/id/eprint/100829/
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spelling my.uitm.ir.1008292024-09-26T16:39:23Z https://ir.uitm.edu.my/id/eprint/100829/ Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi Amri, Nur Amirah Mohd Fuzi, Mohd Faris Neural networks (Computer science) Android devices are becoming increasingly popular and there are more threats to Android users because malware writers are shifting their focus to exploiting vulnerabilities of Android devices for malicious behaviour. This paper will study Android malware detection using a deep learning classification approach. Deep learning is a thriving research area with many successful applications in different fields. Recently, these techniques have been applied to detect mobile malware and have once again shown their ability to remedy this type of problem. In this paper, Android software will be analysed by using malware analysis tools like APKTool and 010 Editor. Some selected features will be extracted from this process and compiled into a csv file. The selected features will be trained using the CNN and RNN model approach. The performance of Android malware detection using CNN and RNN model will be analysed by measuring its accuracy based on Metric Formula Definition Accuracy. According to the development process, CNN is performing better by detecting android malware with a 96 percent accuracy, while RNN delivers a 75 percent accuracy. College of Computing, Informatics and Media, UiTM Perlis 2023 Book Section PeerReviewed text en https://ir.uitm.edu.my/id/eprint/100829/1/100829.pdf Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi. (2023) In: Research Exhibition in Mathematics and Computer Sciences (REMACS 5.0). College of Computing, Informatics and Media, UiTM Perlis, pp. 267-268. ISBN 978-629-97934-0-3
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Neural networks (Computer science)
spellingShingle Neural networks (Computer science)
Amri, Nur Amirah
Mohd Fuzi, Mohd Faris
Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
description Android devices are becoming increasingly popular and there are more threats to Android users because malware writers are shifting their focus to exploiting vulnerabilities of Android devices for malicious behaviour. This paper will study Android malware detection using a deep learning classification approach. Deep learning is a thriving research area with many successful applications in different fields. Recently, these techniques have been applied to detect mobile malware and have once again shown their ability to remedy this type of problem. In this paper, Android software will be analysed by using malware analysis tools like APKTool and 010 Editor. Some selected features will be extracted from this process and compiled into a csv file. The selected features will be trained using the CNN and RNN model approach. The performance of Android malware detection using CNN and RNN model will be analysed by measuring its accuracy based on Metric Formula Definition Accuracy. According to the development process, CNN is performing better by detecting android malware with a 96 percent accuracy, while RNN delivers a 75 percent accuracy.
format Book Section
author Amri, Nur Amirah
Mohd Fuzi, Mohd Faris
author_facet Amri, Nur Amirah
Mohd Fuzi, Mohd Faris
author_sort Amri, Nur Amirah
title Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
title_short Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
title_full Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
title_fullStr Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
title_full_unstemmed Android malware detection using deep learning classification approach / Nur Amirah Amri and Mohd Faris Mohd Fuzi
title_sort android malware detection using deep learning classification approach / nur amirah amri and mohd faris mohd fuzi
publisher College of Computing, Informatics and Media, UiTM Perlis
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/100829/1/100829.pdf
https://ir.uitm.edu.my/id/eprint/100829/
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score 13.211853