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Threshold-based clustering with merging and regularization in application to network intrusion detection

机译:基于阈值的聚类和正则化聚类在网络入侵检测中的应用

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摘要

Signature-based intrusion detection systems look for known, suspicious patterns in the input data. In this paper we explore compression of labeled empirical data using threshold-based clustering with regularization. The main target of clustering is to compress training dataset to the limited number of signatures, and to minimize the number of comparisons that are necessary to determine the status of the input event as a result. Essentially, the process of clustering includes merging of the clusters which are close enough. As a consequence, we will reduce original dataset to the limited number of labeled centroids. In a complex with k-nearest-neighbor (kNN) method, this set of centroids may be used as a multi-class classifier. The experiments on the KDD-99 intrusion detection dataset have confirmed effectiveness of the above procedure.
机译:基于签名的入侵检测系统会在输入数据中寻找已知的可疑模式。在本文中,我们探索使用基于阈值的聚类和正则化来压缩标记的经验数据。聚类的主要目标是将训练数据集压缩到有限数量的签名,并最大程度地减少确定输入事件的状态所必需的比较次数。本质上,集群过程包括合并足够接近的集群。因此,我们将原始数据集减少到有限数量的标记质心。在k近邻(kNN)方法的复数中,这组质心可用作多类分类器。在KDD-99入侵检测数据集上的实验已证实上述过程的有效性。

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