Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.

Malware has emerged as a cyber security threat that continuously changes to target computer systems, smart devices, and extensive networks with the development of information technologies. As a result, malware detection has always been a major worry and a difficult issue, owing to shortcomings in pe...

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Main Authors: Gorment, Nor Zakiah, Selamat, Ali, Cheng, Lim Kok, Krejcar, Ondrej
Format: Article
Language:English
Published: Institute of Electrical and Electronics Engineers Inc. 2023
Subjects:
Online Access:http://eprints.utm.my/104914/1/NorZakiahGorment2023_MachineLearningAlgorithmforMalwareDetectionTaxonomy.pdf
http://eprints.utm.my/104914/
http://dx.doi.org/10.1109/ACCESS.2023.3256979
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Institution: Universiti Teknologi Malaysia
Language: English
id my.utm.104914
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spelling my.utm.1049142024-03-25T09:36:13Z http://eprints.utm.my/104914/ Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions. Gorment, Nor Zakiah Selamat, Ali Cheng, Lim Kok Krejcar, Ondrej TA Engineering (General). Civil engineering (General) Malware has emerged as a cyber security threat that continuously changes to target computer systems, smart devices, and extensive networks with the development of information technologies. As a result, malware detection has always been a major worry and a difficult issue, owing to shortcomings in performance accuracy, analysis type, and malware detection approaches that fail to identify unexpected malware attacks. This paper seeks to conduct a thorough systematic literature review (SLR) and offer a taxonomy of machine learning methods for malware detection that considers these problems by analyzing 77 chosen research works related to malware detection using machine learning algorithm. The research investigates malware and machine learning in the context of cybersecurity, including malware detection taxonomy and machine learning algorithm classification into numerous categories. Furthermore, the taxonomy was used to evaluate the most recent machine learning algorithm and analysis. The paper also examines the obstacles and associated concerns encountered in malware detection and potential remedies. Finally, to address the related issues that would motivate researchers in their future work, an empirical study was utilized to assess the performance of several machine learning algorithms. Institute of Electrical and Electronics Engineers Inc. 2023-03-14 Article PeerReviewed application/pdf en http://eprints.utm.my/104914/1/NorZakiahGorment2023_MachineLearningAlgorithmforMalwareDetectionTaxonomy.pdf Gorment, Nor Zakiah and Selamat, Ali and Cheng, Lim Kok and Krejcar, Ondrej (2023) Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions. IEEE Access, 11 . pp. 141045-141089. ISSN 2169-3536 http://dx.doi.org/10.1109/ACCESS.2023.3256979 DOI: 10.1109/ACCESS.2023.3256979
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Gorment, Nor Zakiah
Selamat, Ali
Cheng, Lim Kok
Krejcar, Ondrej
Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
description Malware has emerged as a cyber security threat that continuously changes to target computer systems, smart devices, and extensive networks with the development of information technologies. As a result, malware detection has always been a major worry and a difficult issue, owing to shortcomings in performance accuracy, analysis type, and malware detection approaches that fail to identify unexpected malware attacks. This paper seeks to conduct a thorough systematic literature review (SLR) and offer a taxonomy of machine learning methods for malware detection that considers these problems by analyzing 77 chosen research works related to malware detection using machine learning algorithm. The research investigates malware and machine learning in the context of cybersecurity, including malware detection taxonomy and machine learning algorithm classification into numerous categories. Furthermore, the taxonomy was used to evaluate the most recent machine learning algorithm and analysis. The paper also examines the obstacles and associated concerns encountered in malware detection and potential remedies. Finally, to address the related issues that would motivate researchers in their future work, an empirical study was utilized to assess the performance of several machine learning algorithms.
format Article
author Gorment, Nor Zakiah
Selamat, Ali
Cheng, Lim Kok
Krejcar, Ondrej
author_facet Gorment, Nor Zakiah
Selamat, Ali
Cheng, Lim Kok
Krejcar, Ondrej
author_sort Gorment, Nor Zakiah
title Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
title_short Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
title_full Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
title_fullStr Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
title_full_unstemmed Machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
title_sort machine learning algorithm for malware detection: taxonomy, current challenges, and future directions.
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2023
url http://eprints.utm.my/104914/1/NorZakiahGorment2023_MachineLearningAlgorithmforMalwareDetectionTaxonomy.pdf
http://eprints.utm.my/104914/
http://dx.doi.org/10.1109/ACCESS.2023.3256979
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