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One Intrusion Detection Method Based On Uniformed Conditional Dynamic Mutual Information

机译:一种基于均匀条件动态互信息的一种入侵检测方法

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With the rapid development of our society, World Wide Web has turned to be an indispensible part of our daily life. Meanwhile, the network security is becoming more and more important. Intrusion Detection System (IDS), which serves to detect the abnormal activities in computers and internet, is often used to solve the network security problems. However, the IDS has to face and process the high dimensional data with high redundancy due to the increasing scale and dimension of the data, which causes the low efficiency of IDS. This paper proposes a new feature selection method for intrusion detection based on the Uniformed Conditional Dynamic Mutual Information (UCDMIFS), which can highly decrease the dimensionality and increase the detection accuracy. To examine our algorithm, the UCDMIFS algorithm Is applied to the KDD Cup 99 data set and compared with other algorithms, such as support vector machine (SVM), to detect the intrusions. The experiments illustrate the efficiency of our algorithm
机译:随着我们社会的快速发展,万维网已成为日常生活中不可或缺的一部分。同时,网络安全变得越来越重要。用于检测计算机和互联网异常活动的入侵检测系统(IDS)通常用于解决网络安全问题。然而,由于数据的增加和尺寸增加,IDS必须面向和处理高冗余的高维数据,这导致ID的低效率。本文提出了一种基于均匀条件动态互信息(UCDMIF)的用于入侵检测的新特征选择方法,这可以高度降低维度并提高检测精度。为了检查我们的算法,将UCDMIFS算法应用于KDD杯99数据集,并与其他算法(例如支持向量机(SVM))进行比较,以检测入侵。实验说明了我们算法的效率

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