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TOPSIS Based Multi-Criteria Decision Making of Feature Selection Techniques for Network Traffic Dataset

机译:基于TOPSIS的网络流量数据集特征选择技术的多准则决策

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Intrusion detection systems (IDS) have to process millions of packets with many features, which delay the detection of anomalies. Sampling and feature selection may be used to reduce computation time and hence minimizing intrusion detection time. This paper aims to suggest some feature selection algorithm on the basis of The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS). TOPSIS is used to suggest one or more choice(s) among some alternatives, having many attributes. Total ten feature selection techniques have been used for the analysis of KDD network dataset. Three classifiers namely Na?ve Bayes, J48 and PART have been considered for this experiment using Weka data mining tool. Ranking of the techniques using TOPSIS have been calculated by using MATLAB as a tool. Out of these techniques Filtered Subset Evaluation has been found suitable for intrusion detection in terms of very less computational time with acceptable accuracy.
机译:入侵检测系统(IDS)必须处理具有许多功能的数百万个数据包,这会延迟异常检测。采样和特征选择可以用于减少计算时间,从而最小化入侵检测时间。本文旨在根据“与理想解相似度的优先顺序技术”(TOPSIS)提出一些特征选择算法。 TOPSIS用于建议一些备选方案中的一个或多个具有多个属性的选择。总共十种特征选择技术已用于分析KDD网络数据集。使用Weka数据挖掘工具,针对该实验考虑了三个分类器,即朴素贝叶斯,J48和PART。使用MATLAB作为工具已经计算出使用TOPSIS的技术排名。在这些技术中,已过滤的子集评估已被发现适合以较低的计算时间和可接受的精度进行入侵检测。

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