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Akhtar, 2021 - Google Patents

Malware detection and analysis: Challenges and research opportunities

Akhtar, 2021

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Document ID
16786531993733727827
Author
Akhtar Z
Publication year
Publication venue
arXiv preprint arXiv:2101.08429

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Malwares are continuously growing in sophistication and numbers. Over the last decade, remarkable progress has been achieved in anti-malware mechanisms. However, several pressing issues (eg, unknown malware samples detection) still need to be addressed …
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