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A novel feature selection approach for intrusion detection data classification

机译:一种新颖的入侵检测数据分类特征选择方法

摘要

Intrusion Detection Systems (IDSs) play a significant role in monitoring and analyzing daily activities occurring in computer systems to detect occurrences of security threats. However, the routinely produced analytical data from computer networks are usually of very huge in size. This creates a major challenge to IDSs, which need to examine all features in the data to identify intrusive patterns. The objective of this study is to analyze and select the more discriminate input features for building computationally efficient and effective schemes for an IDS. For this, a hybrid feature selection algorithm in combination with wrapper and filter selection processes is designed in this paper. Two main phases are involved in this algorithm. The upper phase conducts a preliminary search for an optimal subset of features, in which the mutual information between the input features and the output class serves as a determinant criterion. The selected set of features from the previous phase is further refined in the lower phase in a wrapper manner, in which the Least Square Support Vector Machine (LSSVM) is used to guide the selection process and retain optimized set of features. The efficiency and effectiveness of our approach is demonstrated through building an IDS and a fair comparison with other state-of-the-art detection approaches. The experimental results show that our hybrid model is promising in detection compared to theudpreviously reported results.
机译:入侵检测系统(IDS)在监视和分析计算机系统中发生的日常活动以检测安全威胁的发生中起重要作用。但是,通常从计算机网络生成的分析数据的规模非常大。这给IDS带来了重大挑战,IDS需要检查数据中的所有功能以识别入侵模式。这项研究的目的是分析和选择更具区别性的输入特征,以构建IDS的计算有效方案。为此,设计了一种结合包装器和过滤器选择过程的混合特征选择算法。该算法涉及两个主要阶段。上阶段对特征的最佳子集进行初步搜索,其中输入特征和输出类之间的相互信息充当决定性标准。从上一阶段选择的特征集在下层阶段以包装方式进一步完善,其中最小二乘支持向量机(LSSVM)用于指导选择过程并保留优化的特征集。通过构建IDS并与其他最新检测方法进行公平比较,证明了我们方法的效率和有效性。实验结果表明,与以前报道的结果相比,我们的混合模型在检测方面很有希望。

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