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arxiv: 2307.01494 · v1 · pith:BKEZUBVK · submitted 2023-07-04 · cs.LG · cs.CR

Review of Deep Learning-based Malware Detection for Android and Windows System

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classification cs.LG cs.CR
keywords malwaretechniquesanti-malwaredifferentsystemai-enabledandroiddetecting
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Differentiating malware is important to determine their behaviors and level of threat; as well as to devise defensive strategy against them. In response, various anti-malware systems have been developed to distinguish between different malwares. However, most of the recent malware families are Artificial Intelligence (AI) enable and can deceive traditional anti-malware systems using different obfuscation techniques. Therefore, only AI-enabled anti-malware system is robust against these techniques and can detect different features in the malware files that aid in malicious activities. In this study we review two AI-enabled techniques for detecting malware in Windows and Android operating system, respectively. Both the techniques achieved perfect accuracy in detecting various malware families.

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