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An efficient hidden Markov model training scheme for anomaly intrusion detection of server applications based on system calls

机译:一种基于系统调用的服务器应用程序异常入侵检测的有效隐马尔可夫模型训练方案

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Recently hidden Markov model (HMM) has been proved to be a good tool to model normal behaviours of privileged processes for anomaly intrusion detection based on system calls. However, one major problem with this approach is that it demands excessive computing resources in the HMM training process, which makes it inefficient for practical intrusion detection systems. In this paper a simple and efficient HMM training scheme is proposed by the innovative integration of multiple-observations training and incremental HMM training. The proposed scheme first divides the long observation sequence into multiple subsets of sequences. Next each subset of data is used to infer one sub-model, and then this sub-model is incrementally merged into the final HMM model. Our experimental results show that our HMM training scheme can reduce the training time by about 60% compared to that of the conventional batch training. The results also show that our HMM-based detection model is able to detect all denial-of-service attacks embedded in testing traces.
机译:最近,隐马尔可夫模型(HMM)已被证明是对特权进程的正常行为进行建模以基于系统调用进行异常入侵检测的良好工具。但是,这种方法的一个主要问题是,它在HMM训练过程中需要过多的计算资源,这对于实际的入侵检测系统来说效率很低。本文通过将多次观测训练与增量式HMM训练进行创新性集成,提出了一种简单有效的HMM训练方案。所提出的方案首先将长观察序列分成序列的多个子集。接下来,使用数据的每个子集来推断一个子模型,然后将该子模型增量合并到最终的HMM模型中。我们的实验结果表明,与传统的批量训练相比,我们的HMM训练方案可以将训练时间减少约60%。结果还表明,我们基于HMM的检测模型能够检测到嵌入在测试跟踪中的所有拒绝服务攻击。

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