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A Survey on ML Techniques for Multi-Platform Malware Detection: Securing PC, Mobile Devices, IoT, and Cloud Environments
by
Islam, Rafiqul
, Ferdous, Jannatul
, Mahboubi, Arash
, Islam, Md Zahidul
in
Algorithms
/ Cybersecurity
/ Linux
/ Machine learning
/ Malware
/ malware analysis
/ malware detection
/ mobile malware
/ multi-platform malware
/ Neural networks
/ PC malware
/ Ransomware
/ Review
/ Taxonomy
/ Threats
/ Trends
2025
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A Survey on ML Techniques for Multi-Platform Malware Detection: Securing PC, Mobile Devices, IoT, and Cloud Environments
by
Islam, Rafiqul
, Ferdous, Jannatul
, Mahboubi, Arash
, Islam, Md Zahidul
in
Algorithms
/ Cybersecurity
/ Linux
/ Machine learning
/ Malware
/ malware analysis
/ malware detection
/ mobile malware
/ multi-platform malware
/ Neural networks
/ PC malware
/ Ransomware
/ Review
/ Taxonomy
/ Threats
/ Trends
2025
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Do you wish to request the book?
A Survey on ML Techniques for Multi-Platform Malware Detection: Securing PC, Mobile Devices, IoT, and Cloud Environments
by
Islam, Rafiqul
, Ferdous, Jannatul
, Mahboubi, Arash
, Islam, Md Zahidul
in
Algorithms
/ Cybersecurity
/ Linux
/ Machine learning
/ Malware
/ malware analysis
/ malware detection
/ mobile malware
/ multi-platform malware
/ Neural networks
/ PC malware
/ Ransomware
/ Review
/ Taxonomy
/ Threats
/ Trends
2025
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A Survey on ML Techniques for Multi-Platform Malware Detection: Securing PC, Mobile Devices, IoT, and Cloud Environments
Journal Article
A Survey on ML Techniques for Multi-Platform Malware Detection: Securing PC, Mobile Devices, IoT, and Cloud Environments
2025
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Overview
Malware has emerged as a significant threat to end-users, businesses, and governments, resulting in financial losses of billions of dollars. Cybercriminals have found malware to be a lucrative business because of its evolving capabilities and ability to target diverse platforms such as PCs, mobile devices, IoT, and cloud platforms. While previous studies have explored single platform-based malware detection, no existing research has comprehensively reviewed malware detection across diverse platforms using machine learning (ML) techniques. With the rise of malware on PC or laptop devices, mobile devices and IoT systems are now being targeted, posing a significant threat to cloud environments. Therefore, a platform-based understanding of malware detection and defense mechanisms is essential for countering this evolving threat. To fill this gap and motivate further research, we present an extensive review of malware detection using ML techniques with respect to PCs, mobile devices, IoT, and cloud platforms. This paper begins with an overview of malware, including its definition, prominent types, analysis, and features. It presents a comprehensive review of machine learning-based malware detection from the recent literature, including journal articles, conference proceedings, and online resources published since 2017. This study also offers insights into the current challenges and outlines future directions for developing adaptable cross-platform malware detection techniques. This study is crucial for understanding the evolving threat landscape and for developing robust detection strategies.
Publisher
MDPI AG,MDPI
Subject
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