An improved k-Means Clustering algorithm for Intrusion Detection using Gaussian function

G. R. Kumar, N. Mangathayaru, G. Narasimha
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引用次数: 55

Abstract

In this paper the major objective is to design and analyze the suitability of Gaussian similarity measure for intrusion detection. The objective is to use this as a distance measure to find the distance between any two data samples of training set such as DARPA Data Set, KDD Data Set. This major objective is to use this measure as a distance metric when applying k-means algorithm. The novelty of this approach is making use of the proposed distance function as part of k-means algorithm so as to obtain disjoint clusters. This is followed by a case study, which demonstrates the process of Intrusion Detection. The proposed similarity has fixed upper and lower bounds.
基于高斯函数的入侵检测改进k-均值聚类算法
本文的主要目的是设计和分析高斯相似度量在入侵检测中的适用性。目标是使用它作为距离度量来找到训练集(如DARPA数据集,KDD数据集)的任意两个数据样本之间的距离。这个主要目标是在应用k-means算法时使用这个度量作为距离度量。该方法的新颖之处在于利用所提出的距离函数作为k-means算法的一部分,从而获得不相交的聚类。接下来是一个案例研究,演示了入侵检测的过程。所提出的相似度有固定的上下界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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