利用关联特征选择提高入侵检测的有效性

H. Nguyen, K. Franke, Slobodan V. Petrovic
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引用次数: 111

摘要

特征选择算法的质量是影响入侵检测系统有效性的重要因素之一。在不影响分类精度的情况下减少相关流量特征的数量是一个大大提高IDS整体有效性的目标。在不涉及专家知识的情况下自动获取良好的特征集是一项复杂的任务。在本文中,我们提出了一种基于机器学习中使用的滤波方法的自动特征选择过程。我们特别关注了相关特征选择(CFS)。通过将CFS优化问题转化为一个多项式混合0−1分式规划问题,并在转化后的问题中引入附加变量,得到了一个新的具有若干约束和变量的混合0−1线性规划问题,这些约束和变量在满集特征数上是线性的。然后用分支定界算法求解混合0−1线性规划问题。我们的特征选择算法在特征选择能力方面与best-first-CFS和genetic-algorithm-CFS方法进行了实验比较。在KDD CUP’99 IDS基准数据集上,对C4.5和BayesNet机器进行特征选择后得到的分类准确率进行了测试。实验表明,该方法在去除大量冗余特征的同时,仍然保持了分类精度,甚至取得了更好的性能,优于最佳优先算法和遗传算法搜索策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Effectiveness of Intrusion Detection by Correlation Feature Selection
The quality of the feature selection algorithm is one of the most important factors that affects the effectiveness of an intrusion detection system (IDS). Achieving reduction of the number of relevant traffic features without negative effect on classification accuracy is a goal that greatly improves the overall effectiveness of the IDS. Obtaining a good feature set automatically without involving expert knowledge is a complex task. In this paper, we propose an automatic feature selection procedure based on the filter method used in machine learning. In particular, we focus on Correlation Feature Selection (CFS). By transforming the CFS optimization problem into a polynomial mixed 0−1 fractional programming problem and by introducing additional variables in the problem transformed in such a way, we obtain a new mixed 0 − 1 linear programming problem with a number of constraints and variables that is linear in the number of full set features. The mixed 0−1 linear programming problem can then be solved by means of branch-and-bound algorithm. Our feature selection algorithm was compared experimentally with the best-first-CFS and the genetic-algorithm-CFS methods regarding the feature selection capabilities. The classification accuracy obtained after the feature selection by means of the C4.5 and the BayesNet machines over the KDD CUP'99 IDS benchmarking data set was also tested. Experiments show that our proposed method outperforms the best first and genetic algorithm search strategies by removing much more redundant features and still keeping the classification accuracies or even getting better performances.
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