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Improving Classification Accuracy of Intrusion Detection System Using Feature Subset Selection

机译:利用特征子集选择提高入侵检测系统的分类精度

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Intrusion detection system (IDS) research field has grown tremendously in the past decade. Improving the detection rate of user to root (U2R) attack class is an open research problem. Current IDS uses all data features to detect intrusions. Some of the features may be redundant to the detection process. The purpose of this empirical study is to identify the important features to improve the detection rate and reduce the false detection rate. The investigated feature subset selection techniques improve the overall accuracy, detection rate of U2R attack class and also reduce the computational cost. The empirical results have shown a noticeable improvement in detection rate of U2R attack class with feature subset selection techniques.
机译:在过去的十年中,入侵检测系统(IDS)的研究领域得到了巨大的发展。提高用户对根(U2R)攻击类别的检测率是一个开放的研究问题。当前的IDS使用所有数据功能来检测入侵。一些功能可能对检测过程是多余的。这项实证研究的目的是确定重要特征,以提高检测率并降低错误检测率。研究的特征子集选择技术提高了整体准确性,U2R攻击类别的检测率,并降低了计算成本。实验结果表明,采用特征子集选择技术可以显着提高U2R攻击类别的检测率。

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