2022
DOI: 10.21203/rs.3.rs-1311205/v1
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Fast and Robust Detection of Adversarial Attacks in the Problem Space using Machine Learning

Abstract: Machine learning is widely accepted as an accurate statistical approach for malware detection to cope with the rising uncertainty risk and complexity of modern intrusions. Not only has machine learning security been asked, but it has also been challenged in the past. However, it has been identified that machine learning contains intrinsic weaknesses that may be exploited to avoid detection during testing. So, look at it another way, machine learning can become an intelligence system bottleneck. We use the rela… Show more

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