基于改进模糊隶属函数的进化特征聚类异常检测方法:基于特征聚类的异常检测方法

G. R. Kumar, G. Narsimha, N. Mangathayaru
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引用次数: 14

摘要

传统上,入侵检测系统是通过应用机器学习技术开发的,并遵循单一学习机制或多种学习机制。维数是影响分类精度和分类器性能的重要因素。特征选择方法在研究文献中得到了广泛的研究和应用。本文提出了一种新的模糊隶属函数来检测异常和入侵,并提出了一种降维方法。CANN无法解决R2L和U2R攻击,并且完全失败,显示这些攻击的准确性几乎为零。继CANN之后,与分类器kNN和SVM相比,CLAPP方法显示出更好的分类器准确性。本研究旨在提高CLAPP、CANN和kNN的准确率。实验结果表明,与现有方法相比,该方法的精度更高。特别是U2R和R2L攻击对用户准确性的检测被记录为非常有前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evolutionary Feature Clustering Approach for Anomaly Detection Using Improved Fuzzy Membership Function: Feature Clustering Approach for Anomaly Detection
Traditionally, IDS have been developed by applying machine learning techniques and followed single learning mechanisms or multiple learning mechanisms. Dimensionality is an important concern which affects classification accuracies and eventually the classifier performance. Feature selection approaches are widely studied and applied in research literature. In this work, a new fuzzy membership function to detect anomalies and intrusions and a method for dimensionality reduction is proposed. CANN could not address R2L and U2R attacks and have completely failed by showing these attack accuracies almost zero. Following CANN, the CLAPP approach has shown better classifier accuracies when compared to classifiers kNN, and SVM. This research aims at improving the accuracy achieved by CLAPP, CANN, and kNN. Experimental results show accuracies obtained using proposed approach is better when compared to other existing approaches. In particular, the detection of U2R and R2L attacks to user accuracies are recorded to be very much promising.
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