Machine learning approaches for malware classification in android platform: a review
The rapid growth of Android applications has led to a continuous influx of Android malware. Numerous research has been undertaken to tackle that issue. Existing research has indicated that leveraging machine learning is a highly effective and promising approach for Android malware detection. This pa...
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Semarak Ilmu Publishing
2025
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Online Access: | https://eprints.ums.edu.my/id/eprint/41927/1/ABSTRACT.pdf https://eprints.ums.edu.my/id/eprint/41927/2/FULL%20TEXT.pdf https://eprints.ums.edu.my/id/eprint/41927/ https://doi.org/10.37934/araset.48.1.248268 |
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my.ums.eprints.419272024-11-18T02:01:20Z https://eprints.ums.edu.my/id/eprint/41927/ Machine learning approaches for malware classification in android platform: a review Howida Alkaaf Farkhana Muchtar Salmah Fattah Asraf Osman Ibrahim Elsayed Carolyn Salimun Hadzariah Ismail Farhan Masud LB1050.9-1091 Educational psychology QA71-90 Instruments and machines The rapid growth of Android applications has led to a continuous influx of Android malware. Numerous research has been undertaken to tackle that issue. Existing research has indicated that leveraging machine learning is a highly effective and promising approach for Android malware detection. This paper presents a review of Android malware detection methodologies that rely on machine learning. We commence by providing a brief overview of the background context related to Android applications, including insights into the Android system architecture, security mechanisms, and the categorization of Android malware. Subsequently, with machine learning as the central focus, we methodically examine and condense the current state of research, encompassing crucial perspectives such as sample acquisition, data preprocessing, feature selection, machine learning models, algorithms, and the assessment of detection effectiveness. The aim of this review is to equip scholars with a holistic understanding of Android malware detection through the lens of machine learning. It is intended to serve as a foundational resource for future researchers embarking on new endeavours in this field, while also providing overarching guidance for research endeavours within the broader domain. Semarak Ilmu Publishing 2025 Article NonPeerReviewed text en https://eprints.ums.edu.my/id/eprint/41927/1/ABSTRACT.pdf text en https://eprints.ums.edu.my/id/eprint/41927/2/FULL%20TEXT.pdf Howida Alkaaf and Farkhana Muchtar and Salmah Fattah and Asraf Osman Ibrahim Elsayed and Carolyn Salimun and Hadzariah Ismail and Farhan Masud (2025) Machine learning approaches for malware classification in android platform: a review. Journal of Advanced Research in Applied Sciences and Engineering Technology, 48. pp. 248-268. ISSN 2462-1943 https://doi.org/10.37934/araset.48.1.248268 |
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LB1050.9-1091 Educational psychology QA71-90 Instruments and machines Howida Alkaaf Farkhana Muchtar Salmah Fattah Asraf Osman Ibrahim Elsayed Carolyn Salimun Hadzariah Ismail Farhan Masud Machine learning approaches for malware classification in android platform: a review |
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The rapid growth of Android applications has led to a continuous influx of Android malware. Numerous research has been undertaken to tackle that issue. Existing research has indicated that leveraging machine learning is a highly effective and promising approach for Android malware detection. This paper presents a review of Android malware detection methodologies that rely on machine learning. We commence by providing a brief overview of the background context related to Android applications, including insights into the Android system architecture, security mechanisms, and the categorization of Android malware. Subsequently, with machine learning as the central focus, we methodically examine and condense the current state of research, encompassing crucial perspectives such as sample acquisition, data preprocessing, feature selection, machine learning models, algorithms, and the assessment of detection effectiveness. The aim of this review is to equip scholars with a holistic understanding of Android malware detection through the lens of machine learning. It is intended to serve as a foundational resource for future researchers embarking on new endeavours in this field, while also providing overarching guidance for research endeavours within the broader domain. |
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Article |
author |
Howida Alkaaf Farkhana Muchtar Salmah Fattah Asraf Osman Ibrahim Elsayed Carolyn Salimun Hadzariah Ismail Farhan Masud |
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Howida Alkaaf Farkhana Muchtar Salmah Fattah Asraf Osman Ibrahim Elsayed Carolyn Salimun Hadzariah Ismail Farhan Masud |
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Howida Alkaaf |
title |
Machine learning approaches for malware classification in android platform: a review |
title_short |
Machine learning approaches for malware classification in android platform: a review |
title_full |
Machine learning approaches for malware classification in android platform: a review |
title_fullStr |
Machine learning approaches for malware classification in android platform: a review |
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Machine learning approaches for malware classification in android platform: a review |
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machine learning approaches for malware classification in android platform: a review |
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Semarak Ilmu Publishing |
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2025 |
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https://eprints.ums.edu.my/id/eprint/41927/1/ABSTRACT.pdf https://eprints.ums.edu.my/id/eprint/41927/2/FULL%20TEXT.pdf https://eprints.ums.edu.my/id/eprint/41927/ https://doi.org/10.37934/araset.48.1.248268 |
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13.214268 |