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Intrusion Detection System Using Sequence and Set Preserving Metric

机译:入侵检测系统使用序列和设定保持度量

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Intrusion detection systems rely on a wide variety of observable data to distinguish between legitimate and illegitimate activities. In this paper we investigate the use of sequences of system calls for classifying intrusions and faults induced by privileged processes in Unix Operating system. In our work we applied sequence-data mining approach in the context of intrusion detection system (IDS). This paper introduces a new similarity measure that considers both sequence as well as set similarity among sessions. Considering both order of occurrences as well as content in a session enhances the capabilities of kNN classifier significantly, especially in the context of intrusion detection. From our experiments on DARPA 1998 IDS dataset we infer that the order of occurrences plays a major role in determining the nature of the session. The objective of this work is to construct concise and accurate classifiers to detect anomalies based on sequence as well as set similarity.
机译:入侵检测系统依赖于各种可观察数据,以区分合法和非法活动。在本文中,我们调查了系统呼叫序列的使用,以便在UNIX操作系统中的特权进程引起的分类入侵和故障。在我们的工作中,我们在入侵检测系统(ID)的上下文中应用了序列数据挖掘方法。本文介绍了一种新的相似性度,它认为序列以及会话之间的相似性。考虑到两种情况以及会话中的内容显着提高了KNN分类器的功能,特别是在入侵检测的背景下。从我们的DARPA 1998年IDS数据集中推断出现的顺序在确定会话的性质方面发挥着重要作用。这项工作的目的是构建简明和准确的分类器来检测基于序列的异常以及设定相似度。

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