A Comparative Study of Classification Techniques for Intrusion Detection

Himadri Chauhan, Vipin Kumar, S. Pundir, E. Pilli
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引用次数: 80

Abstract

Intrusion detection is one of the major research problems in network security. It is the process of monitoring and analyzing network traffic data to detect security violations. Mining approach can play very important role in developing an intrusion detection system. The network traffic can be classified into normal and anomalous in order to detect intrusions. In our paper, top-ten classification algorithms namely J48, BayesNet, Logistic, SGD, IBK, JRip, PART, Random Forest, Random Tree and REPTree were selected after experimenting with more than twenty most widely used classification algorithms. The comparison of these top-ten classification algorithms is presented in this paper based upon their performance metrics to find out the best suitable algorithm available. Performance of the classification models is measured using 10-fold cross validation. Experiments and assessments of these methods are performed in WEKA environment using NSL-KDD dataset.
入侵检测分类技术的比较研究
入侵检测是网络安全领域的主要研究问题之一。它是监控和分析网络流量数据以检测安全违规的过程。挖掘方法在开发入侵检测系统中起着非常重要的作用。为了检测入侵,可以将网络流量分为正常流量和异常流量。本文通过对20多种应用最广泛的分类算法进行实验,选择了J48、BayesNet、Logistic、SGD、IBK、JRip、PART、Random Forest、Random Tree和REPTree等十大分类算法。本文根据性能指标对这十大分类算法进行比较,找出最适合的算法。使用10倍交叉验证来测量分类模型的性能。在WEKA环境下使用NSL-KDD数据集对这些方法进行了实验和评估。
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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