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Can Machine/Deep Learning Classifiers Detect Zero-Day Malware with High Accuracy?

机译:机器/深度学习分类器可以高精度检测零日恶意软件吗?

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The detection of zero-day attacks and vulnerabilities is a challenging problem. It is of utmost importance for network administrators to identify them with high accuracy. The higher the accuracy is, the more robust the defense mechanism will be. In an ideal scenario (i.e., 100% accuracy) the system can detect zero-day malware without being concerned about mistakenly tagging benign files as malware or enabling disruptive malicious code running as none-malicious ones. This paper investigates different machine learning algorithms to find out how well they can detect zero-day malware. Through the examination of 34 machine/deep learning classifiers, we found that the random forest classifier offered the best accuracy. The paper poses several research questions regarding the performance of machine and deep learning algorithms when detecting zero-day malware with zero rates for false positive and false negative.
机译:零日攻击和漏洞的检测是一个具有挑战性的问题。对于网络管理员而言,最重要的是要高度准确地识别它们。准确性越高,防御机制将越强大。在理想情况下(即100%准确性),系统可以检测到零时差恶意软件,而不必担心将良性文件错误地标记为恶意软件或使破坏性恶意代码作为非恶意代码运行。本文研究了不同的机器学习算法,以发现它们能够很好地检测零日恶意软件。通过检查34个机器/深度学习分类器,我们发现随机森林分类器提供了最佳准确性。本文提出了一些有关机器和深度学习算法的性能的研究问题,这些算法在检测零误报率和误报率的零时差恶意软件时的性能。

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