Performance Evaluation of PCA Filter In Clustered Based Intrusion Detection System

S. Shirbhate, S. Sherekar, V. Thakare
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引用次数: 6

Abstract

The study, analysis and exploration of recent development of data mining applications such as classification and clustering is one of the needs for machine learning algorithms to be applied to large scale data will lead to acquire the direction of future research. It would be future demand in IDS for detecting the intrusions in mobile network. This paper presents the comparison of different clustering techniques. Also focus on the effect of Principal Component Analysis filter on these clustered based methods.The aim of this paper is to investigate the performance of different clustering methods for a set of large data. The algorithms are tested on intrusion detection data set. A fundamental review on the selected clustering techniques is presented for introduction purposes. The KDD data set is used for this purpose. Subsequently, clustering technique that has the potential to significantly improve the conventional methods will be suggested for the use in intrusion detection in mobile network data.
基于聚类的入侵检测系统中PCA滤波器的性能评价
对分类、聚类等数据挖掘应用的最新发展进行研究、分析和探索是机器学习算法应用于大规模数据的需要之一,将导致获得未来的研究方向。移动网络入侵检测是IDS未来的发展方向。本文对不同的聚类技术进行了比较。重点讨论了主成分分析滤波器对这些聚类方法的影响。本文的目的是研究不同聚类方法对一组大数据的性能。在入侵检测数据集上对算法进行了测试。本文对所选择的聚类技术进行了基本回顾,以供介绍。KDD数据集用于此目的。在此基础上,本文提出了一种具有显著改进传统入侵检测方法的聚类技术,用于移动网络数据的入侵检测。
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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