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Anomaly Detection Through Statistics-Based Machine Learning For Computer Networks

机译:通过基于统计的机器学习对计算机网络进行异常检测

摘要

The intrusion detection in computer networks is a complex research problem, which requires the understanding of computer networks and the mechanism of intrusions, the configuration of sensors and the collected data, the selection of the relevant attributes, and the monitor algorithms for online detection. It is critical to develop general methods for data dimension reduction, effective monitoring algorithms for intrusion detection, and means for their performance improvement. This dissertation is motivated by the timely need to develop statistics-based machine learning methods for effective detection of computer network anomalies.Three fundamental research issues related to data dimension reduction, control charts design and performance improvement have been addressed accordingly. The major research activities and corresponding contributions are summarized as follows:(1) Filter and Wrapper models are integrated to extract a small number of the informative attributes for computer network intrusion detection. A two-phase analyses method is proposed for the integration of Filter and Wrapper models. The proposed method has successfully reduced the original 41 attributes to 12 informative attributes while increasing the accuracy of the model. The comparison of the results in each phase shows the effectiveness of the proposed method.(2) Supervised kernel based control charts for anomaly intrusion detection. We propose to construct control charts in a feature space. The first contribution is the use of multi-objective Genetic Algorithm in the parameter pre-selection for SVM based control charts. The second contribution is the performance evaluation of supervised kernel based control charts.(3) Unsupervised kernel based control charts for anomaly intrusion detection. Two types of unsupervised kernel based control charts are investigated: Kernel PCA control charts and Support Vector Clustering based control charts. The applications of SVC based control charts on computer networks audit data are also discussed to demonstrate the effectiveness of the proposed method.Although the developed methodologies in this dissertation are demonstrated in the computer network intrusion detection applications, the methodologies are also expected to be applied to other complex system monitoring, where the database consists of a large dimensional data with non-Gaussian distribution.
机译:计算机网络中的入侵检测是一个复杂的研究问题,需要了解计算机网络和入侵机制,传感器和收集的数据的配置,相关属性的选择以及用于在线检测的监视算法。开发减少数据尺寸的通用方法,有效的入侵检测监视算法以及提高其性能的方法至关重要。本文是基于及时开发基于统计的机器学习方法来有效检测计算机网络异常的动力。相应地,解决了与数据降维,控制图设计和性能改进有关的三个基础研究问题。主要的研究工作和相应的研究成果概括如下:(1)集成了过滤器和包装器模型,以提取少量信息量用于计算机网络入侵检测。针对滤波器模型和包装模型的集成,提出了一种两阶段分析方法。所提出的方法已经成功地将原始的41个属性减少到12个信息属性,同时提高了模型的准确性。每个阶段的结果比较表明了该方法的有效性。(2)基于监督核的异常入侵检测控制图。我们建议在特征空间中构造控制图。第一个贡献是在基于SVM的控制图的参数预选择中使用了多目标遗传算法。第二个贡献是基于监督内核的控制图的性能评估。(3)用于异常入侵检测的无监督内核控制图。研究了两种基于监督的无监督内核控制图:内核PCA控制图和基于支持向量聚类的控制图。本文还讨论了基于SVC的控制图在计算机网络审计数据中的应用,以证明该方法的有效性。尽管本文所开发的方法在计算机网络入侵检测应用中得到了证明,但该方法也有望应用于其他复杂的系统监视,其中数据库由具有非高斯分布的大型数据组成。

著录项

  • 作者

    Zhu Xuejun;

  • 作者单位
  • 年度 2006
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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