Implementation of adversarial scenario to malware analytic

Chia-Min Lai, Chia-Yu Lu, Hahn-Ming Lee
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Abstract

As the worldwide internet has non-stop developments, it comes with enormous amount automatically generated malware. Those malware had become huge threaten to computer users. A comprehensive malware family classifier can help security researchers to quickly identify characteristics of malware which help malware analysts to investigate in more efficient way. However, despite the assistance of the artificial intelligent (AI) classifiers, it has been shown that the AI-based classifiers are vulnerable to so-called adversarial attacks. In this paper, we demonstrate how the adversarial settings can be applied to the classifier of malware families classification. Our experimental results achieved high successful rate through the adversarial attack. We also find the important features which are ignored by malware analysts but useful in the future analysis.
实现对抗性场景的恶意软件分析
随着全球互联网的不断发展,随之而来的是大量自动生成的恶意软件。这些恶意软件对计算机用户构成了巨大的威胁。一个全面的恶意软件分类器可以帮助安全研究人员快速识别恶意软件的特征,从而帮助恶意软件分析人员更有效地进行调查。然而,尽管有人工智能(AI)分类器的帮助,但研究表明,基于AI的分类器容易受到所谓的对抗性攻击。在本文中,我们演示了如何将对抗性设置应用于恶意软件家族分类器。我们的实验结果通过对抗性攻击获得了很高的成功率。我们还发现了一些被恶意软件分析人员忽略但在未来分析中有用的重要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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