Efficient Feature Selection for Intrusion Detection Systems

S. Ahmadi, S. Rashad, H. Elgazzar
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引用次数: 7

Abstract

Intrusion detection systems (IDSs) monitor network traffics to find suspicious activities, such as an attack or illegal activities. These systems play an important role in securing computer networks. Due to availability of irrelevant or redundant features and big dimensionality of network datasets which results to an inefficient detection process, this study, focused on identifying important attributes in order to build an effective IDS. A majority vote system, using three standard feature selection methods, Correlation-based feature selection, Information Gain, and Chi-square is proposed to select the most relevant features for IDS. The decision tree classifier is applied on reduced feature sets to build an intrusion detection system. The results show that selected reduced attributes from the novel feature selection system give a better performance for building a computationally efficient IDS system.
入侵检测系统的高效特征选择
入侵检测系统(Intrusion detection system, ids)通过监控网络流量,发现可疑活动,如攻击或非法活动。这些系统在保护计算机网络安全方面发挥着重要作用。由于网络数据集存在不相关或冗余的特征,且网络数据集的维度较大,导致检测过程效率低下,因此本研究将重点放在识别重要属性以构建有效的入侵检测系统上。提出了一种基于相关性特征选择、信息增益和卡方三种标准特征选择方法的多数投票系统,以选择最相关的IDS特征。将决策树分类器应用于约简特征集,构建入侵检测系统。结果表明,从新的特征选择系统中选择的约简属性为构建计算效率高的IDS系统提供了更好的性能。
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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