Machine learning for implanted malicious code detection with incompletely specified system implementations

Yating Hsu, David Lee
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引用次数: 2

Abstract

In 2009 UnrealIRCd 3.2.8.1, an IRC (Internet Relay Chat) server, was replaced by a version with a backdoor at its mirror sites. It was not detected until seven months later and it had caused irrevocable damages in IRC services. It is of vital importance and also a challenge to detect implanted malicious code in newly developed systems before their deployment. We apply machine learning to uncover a system implementation structure that includes its normal functions from the design, as well as the hidden malicious behaviors. Published works with machine learning often assume that systems are completely specified. Unfortunately, practical system implementations are usually incompletely specified and the prevalent algorithms do not apply. We design generalized and efficient machine learning algorithms for incompletely specified protocol system implementations for detecting implanted malicious code. We further extend the results where machine learning starts from an approximate model instead of an empty conjecture — a usual approach of machine learning algorithms, and our approach learns an implementation structure more efficiently than the known algorithms. We implement and apply our method to two case studies: an IRC server with backdoor and an MSN client with message flooder. Experiments show that our procedures successfully and efficiently detect the implanted malicious behaviors.
不完全指定系统实现的植入恶意代码检测的机器学习
2009年,IRC (Internet Relay Chat)服务器UnrealIRCd 3.2.8.1被镜像站点带有后门的版本所取代。它直到7个月后才被发现,并对IRC服务造成了不可挽回的损害。在新开发的系统部署之前检测植入的恶意代码是至关重要的,也是一个挑战。我们应用机器学习来揭示系统实现结构,包括其设计中的正常功能,以及隐藏的恶意行为。已发表的机器学习著作通常假设系统是完全指定的。不幸的是,实际的系统实现通常是不完全指定的,流行的算法并不适用。我们为检测植入恶意代码的不完全指定协议系统实现设计了通用且高效的机器学习算法。我们进一步扩展了机器学习从一个近似模型开始的结果,而不是一个空的猜想——机器学习算法的一种常用方法,我们的方法比已知的算法更有效地学习实现结构。我们在两个案例研究中实现并应用我们的方法:带后门的IRC服务器和带消息泛滥的MSN客户端。实验表明,该方法能够有效地检测出植入的恶意行为。
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