Effective Analysis of Feature Selection Algorithms for Network based Intrusion Detection System

Trupti Chandak, Chaitanya Ghorpade, Sanyam Shukla
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引用次数: 3

Abstract

Malicious activities can harm the security of the system. These activities must be avoided. Network traffic data can be monitored and analyzed by using intrusion detection system. Different data mining classification techniques are used to detect network attacks. Dimensionality reduction performs key role in the Intrusion Detection System, since detecting anomalies is time-consuming. Recently a lot of work has been done in feature selection. But, most of the authors have modified the KDD99 test dataset. Modification of training dataset is valid but modifying test dataset is against the machine learning ethics. This work comprises some of the recently proposed feature selection algorithm such as Information gain, Gain Ratio and Correlation-based feature selection with the objective of determining the reduced feature set. The performance is evaluated using a combination of any two feature selection technique. This study proposes a new heuristic based feature selection algorithm using naive Bayes classifier to detect the important reduced feature set. The results are evaluated on c4.5 decision tree classifier and the results are compared with the existing works. The evaluated results show that the proposed reduced feature set gives the effective and efficient performance.
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基于网络的入侵检测系统特征选择算法的有效分析
恶意活动会危害系统的安全性。这些活动必须避免。利用入侵检测系统可以对网络流量数据进行监控和分析。不同的数据挖掘分类技术用于检测网络攻击。由于检测异常非常耗时,降维在入侵检测系统中起着关键作用。近年来,人们在特征选择方面做了大量的工作。但是,大多数作者都修改了KDD99测试数据集。修改训练数据集是有效的,但修改测试数据集是违反机器学习伦理的。本工作包括最近提出的一些特征选择算法,如信息增益、增益比和基于相关性的特征选择,目的是确定约简特征集。使用任意两种特征选择技术的组合来评估性能。本文提出了一种新的基于启发式的特征选择算法,利用朴素贝叶斯分类器检测重要的约简特征集。在c4.5决策树分类器上对结果进行了评价,并与已有成果进行了比较。评估结果表明,所提出的约简特征集具有良好的性能。
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