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A comparison of techniques for on-line incremental learning of HMM parameters in anomaly detection

机译:异常检测中HMM参数在线增量学习技术的比较

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Hidden Markov Models (HMMs) have been shown to provide a high level performance for detecting anomalies in intrusion detection systems. Since incomplete training data is always employed in practice, and environments being monitored are susceptible to changes, a system for anomaly detection should update its HMM parameters in response to new training data from the environment. Several techniques have been proposed in literature for on-line learning of HMM parameters. However, the theoretical convergence of these algorithms is based on an infinite stream of data for optimal performances. When learning sequences with a finite length, on-line incremental versions of these algorithms can improve discrimination by allowing for convergence over several training iterations. In this paper, the performance of these techniques is compared for learning new sequences of training data in host-based intrusion detection. The discrimination of HMMs trained with different techniques is assessed from data corresponding to sequences of system calls to the operating system kernel. In addition, the resource requirements are assessed through an analysis of time and memory complexity. Results suggest that the techniques for online incremental learning of HMM parameters can provide a higher level of discrimination than those for on-line learning, yet require significantly fewer resources than with batch training. On-line incremental learning techniques may provide a promising solution for adaptive intrusion detection systems.
机译:隐马尔可夫模型(HMM)已被证明可以为入侵检测系统中的异常检测提供高水平的性能。由于实践中总是使用不完整的训练数据,并且受监视的环境容易发生变化,因此用于异常检测的系统应响应于来自环境的新训练数据来更新其HMM参数。在文献中已经提出了几种技术来在线学习HMM参数。但是,这些算法的理论收敛是基于无限数据流以实现最佳性能。当学习有限长度的序列时,这些算法的在线增量版本可以通过允许在多个训练迭代中进行收敛来改善区分度。在本文中,比较了这些技术的性能,以学习基于主机的入侵检测中训练数据的新序列。从与操作系统内核的系统调用序列相对应的数据中评估使用不同技术训练的HMM的区别。此外,通过分析时间和内存复杂性来评估资源需求。结果表明,与在线学习相比,用于HMM参数的在线增量学习的技术可以提供更高的区分度,但与批处理训练相比,所需资源却少得多。在线增量学习技术可能为自适应入侵检测系统提供有希望的解决方案。

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