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Mining Normal and Intrusive Activity Patterns for Computer Intrusion Detection

机译:挖掘正常和侵入活动模式以进行计算机入侵检测

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Intrusion detection has become an important part of assuring the computer security. It borrows various algorithms from statistics, machine learning, etc. We introduce in this paper a supervised clustering and classification algorithm (CCAS) and its application in learning patterns of normal and intrusive activities and detecting suspicious activity records. This algorithm utilizes a heuristic in grid-based clustering. Several post-processing techniques including data redistribution, supervised grouping of clusters, and removal of outliers, are used to enhance the scalability and robustness. This algorithm is applied to a large set of computer audit data for intrusion detection. We describe the analysis method in using this data set. The results show that CCAS makes significant improvement in performance with regard to detection ability and robustness.
机译:入侵检测已成为确保计算机安全的重要组成部分。它借鉴了统计,机器学习等方面的各种算法。在本文中,我们介绍了一种监督聚类和分类算法(CCAS),并将其应用于正常和侵入性活动的学习模式以及可疑活动记录的检测中。该算法在基于网格的聚类中利用启发式算法。包括数据重新分配,集群的有监督分组以及离群值的删除在内的几种后处理技术可用于增强可伸缩性和鲁棒性。该算法适用于大量计算机审计数据以进行入侵检测。我们描述了使用此数据集的分析方法。结果表明,CCAS在检测能力和鲁棒性方面显着提高了性能。

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