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A novel weighted support vector machines multiclass classifier based on differential evolution for intrusion detection systems

机译:一种新型加权支撑载体机基于差分演进的入侵检测系统的多标量级

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摘要

This study compares several methods for creating a multiclass, support vector machines based (SVM) classifier from a set of binary SVM classifiers. This research aims to identify multiclass SVM models best suited to the intrusion detection task. The methods we compare include one-against-rest SVM (OAR-SVM), one-against-one SVM (OAO-SVM), directed acyclic graph SVM (DAG-SVM), adaptive directed acyclic graph SVM (ADAG-SVM), and error-correcting output code SVM (ECOC-SVM). We also propose a novel approach, based on weighted one-against-rest SVM (WOAR-SVM). Using a set of meta-heuristically generated weights, a WOAR-SVM model is able to compensate for errors in the predictions of individual binary classifiers. In addition, this approach enables seamless integration of several binary hypotheses into a composite, multiclass hypothesis, where each binary classifier may feature a unique set of classification parameters. The results of our experiments on the NSL-KDD benchmark dataset for IDS indicate that WOAR-SVM outperforms the other approaches in terms of overall accuracy. (C) 2017 Elsevier Inc. All rights reserved.
机译:该研究比较了来自一组二进制SVM分类器的基于(SVM)分类器的多字符,支持向量机(SVM)分类器的若干方法。本研究旨在识别最适合入侵检测任务的多字符SVM模型。我们比较的方法包括单次休息SVM(OAR-SVM),一个反对一个SVM(OAO-SVM),有向非CLIC图SVM(DAG-SVM),自适应定向非循环图SVM(ADAG-SVM),纠错输出代码SVM(ECOC-SVM)。我们还提出了一种新的方法,基于加权单反休息SVM(WOAR-SVM)。使用一组元启发式生成的权重,Woar-SVM模型能够补偿各个二进制分类器的预测中的错误。此外,该方法使得几个二进制假设的无缝集成在复合,多条假设中,其中每个二进制分类器可以具有唯一的一组分类参数。我们对IDS的NSL-KDD基准数据集的实验结果表明Woar-SVM在整体准确性方面优于其他方法。 (c)2017年Elsevier Inc.保留所有权利。

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