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Ensemble of binary SVM classifiers based on PCA and LDA feature extraction for intrusion detection

机译:基于PCA和LDA特征提取的二进制SVM分类器的组合用于入侵检测

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Feature extraction addresses the problem of finding the most compact and informative set of features. To maximize the effectiveness of each single feature extraction algorithm and to develop an efficient intrusion detection system, an ensemble of Linear Discriminant Analysis (LDA) and Principle Component Analysis (PCA) feature extraction algorithms is implemented. This ensemble PCA-LDA method has led to good results and showed a greater proportion of precision in comparison to a single feature extraction method.
机译:特征提取解决了寻找最紧凑和最有用的特征集的问题。为了最大化每个单个特征提取算法的有效性并开发有效的入侵检测系统,实现了线性判别分析(LDA)和主成分分析(PCA)特征提取算法的集成。与单特征提取方法相比,这种集成的PCA-LDA方法产生了良好的结果,并且显示出更高的精度比例。

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