DOOM: a novel adversarial-DRL-based op-code level metamorphic malware obfuscator for the enhancement of IDS

Mohit Sewak, S. Sahay, Hemant Rathore
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引用次数: 19

Abstract

We designed and developed DOOM (Adversarial-DRL based Opcode level Obfuscator to generate Metamorphic malware), a novel system that uses adversarial deep reinforcement learning to obfuscate malware at the op-code level for the enhancement of IDS. The ultimate goal of DOOM is not to give a potent weapon in the hands of cyber-attackers, but to create defensive-mechanisms against advanced zero-day attacks. Experimental results indicate that the obfuscated malware created by DOOM could effectively mimic multiple-simultaneous zero-day attacks. To the best of our knowledge, DOOM is the first system that could generate obfuscated malware detailed to individual op-code level. DOOM is also the first-ever system to use efficient continuous action control based deep reinforcement learning in the area of malware generation and defense. Experimental results indicate that over 67% of the metamorphic malware generated by DOOM could easily evade detection from even the most potent IDS. This achievement gains significance, as with this, even IDS augment with advanced routing sub-system can be easily evaded by the malware generated by DOOM.
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DOOM:一种新型的基于对抗性drl的操作码级变形恶意软件混淆器,用于增强IDS
我们设计并开发了DOOM(基于对抗性drl的操作码级混淆器,用于生成变形恶意软件),这是一个使用对抗性深度强化学习在操作码级混淆恶意软件以增强IDS的新系统。DOOM的最终目标不是为网络攻击者提供强大的武器,而是创建防御机制来对抗先进的零日攻击。实验结果表明,由DOOM创建的模糊恶意软件可以有效地模拟多个同时发生的零日攻击。据我们所知,DOOM是第一个可以生成详细到单个操作代码级别的模糊恶意软件的系统。DOOM也是第一个在恶意软件生成和防御领域使用基于深度强化学习的高效连续动作控制的系统。实验结果表明,DOOM生成的变形恶意软件中有67%以上可以很容易地逃避最强大的IDS的检测。这一成就具有重要意义,因为有了这一点,即使具有高级路由子系统的IDS也很容易被DOOM生成的恶意软件所规避。
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