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Polymorphic Code Detection with GA Optimized Markov Models

机译:具有GA优化的马尔可夫模型的多态代码检测

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This paper presents our progression in the search for reliable anomaly-based intrusion detection mechanisms. We investigated different options of stochastic techniques. We started our investigations with Markov chains to detect abnormal traffic. The main aspect in our prior work was the optimization of transition matrices to obtain better detection accuracy. First, we tried to automatically train the transition matrix with normal traffic. Then, this transition matrix was used to calculate the probabilities of a dedicated Markov sequence. This transition matrix was used to find differences between the trained normal traffic and characteristic parts of a polymorphic shellcode. To improve the efficiency of this automatically trained transition matrix, we modified some entries in a way that byte-sequences of typical shellcodes substantially differs from normal network behavior. But this approach did not meet our requirements concerning generalization. Therefore we searched for automatic methods to improve the matrix. Genetic algorithms are adequate tools if just little knowledge about the search space is available and the complexity of the problem is very hard (NP-complete).
机译:本文介绍了我们在寻求可靠的基于异常的入侵检测机制方面的进展。我们调查了不同的随机技术选择。我们开始使用Markov链进行调查,以检测异常交通。我们前后工作的主要方面是过渡矩阵的优化,以获得更好的检测精度。首先,我们尝试使用正常流量自动培训过渡矩阵。然后,该转换矩阵用于计算专用马尔可夫序列的概率。该转换矩阵用于在多态壳牌码的训练正常流量和特征部分之间找到差异。为了提高这种自动训练的转换矩阵的效率,我们以典型的shellcodes的字节序列与正常网络行为不同的方式修改了一些条目。但这种方法不符合我们关于泛化的要求。因此,我们搜索了改进矩阵的自动方法。如果没有关于搜索空间的知识,遗传算法是适当的工具,并且问题的复杂性非常困难(NP-Complete)。

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