一种评估安全解决方案鲁棒性的对抗机器学习方法

Ciprian-Alin Simion, Dragos Gavrilut, H. Luchian
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引用次数: 0

摘要

网络安全行业一直是一场“猫捉老鼠”的游戏——每当一项新技术被开发出来,很快就会出现一些恶意软件创建者用来逃避检测的技术。毫无疑问,对抗性机器学习算法的发展提供了一种工具,可以用来避免安全产品中基于机器学习的检测机制。本文介绍了如何使用相同的算法通过识别其弱点/特征来加强安全解决方案。我们还将提供一种方法,可用于对抗生成对抗网络(gan)与gan,当恶意软件作者使用这些方法来避免检测时,这是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adversarial Machine Learning Approach to Evaluate the Robustness of a Security Solution
Cyber-Security industry has always been a "cat and a mouse" game - whenever a new technology was developed it was shortly followed by the appearance of several techniques used by malware creators to avoid detection. It is no surprise that the developing of adversarial machine learning algorithms has provided a tool that can be used to avoid machine learning based detection mechanisms available in security products. This paper presents how the same algorithms can also be used to strengthen a security solution by identifying its weak points / features. We will also provide a method that can be used to fight Generative Adversarial Networks (GANs) with GANs, that is effective when a malware writer is using these methods to avoid detection.
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