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An improved feature selection algorithm based on MAHALANOBIS distance for Network Intrusion Detection

机译:一种改进的基于马氏距离的网络入侵检测特征选择算法

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Network Intrusion Detection System (NIDS) plays an important role in providing network security. Efficient NIDS can be developed by defining a proper rule set for classifying network audit data into normal or attack patterns. Generally, each dataset is characterized by a large set of features, but not all features will be relevant or fully contribute identifying an attack. Since different attacks need different subsets to have better detection accuracy, this paper describes an improved feature selection algorithm to identify most appropriate subset of features for a certain attack. The proposed method is based on MAHALANOBIS Distance feature ranking and an improved exhaustive search to choose a better combination of features. We evaluate the approach on the KDD CUP 1999 datasets using SVM classifier and KNN classifier. The results show that classification is done with high classification rate and low misclassification rate with the reduced feature subsets.
机译:网络入侵检测系统(NIDS)在提供网络安全方面发挥着重要作用。通过定义适当的规则集,将网络审计数据分为正常模式或攻击模式,可以开发高效的NIDS。通常,每个数据集都有一大组特征,但并非所有特征都与识别攻击相关或完全有助于识别攻击。由于不同的攻击需要不同的子集才能有更好的检测精度,本文描述了一种改进的特征选择算法,以识别针对特定攻击的最合适的特征子集。该方法基于马氏距离特征排序和改进的穷举搜索来选择更好的特征组合。我们使用SVM分类器和KNN分类器在KDD CUP 1999数据集上评估了该方法。结果表明,在减少特征子集的情况下,分类率高,误分类率低。

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