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Classifier Ensemble Design with Rotation Forest to Enhance Attack Detection of IDS in Wireless Network

机译:具有旋转森林的分类器集成设计,可增强无线网络中IDS的攻击检测能力

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摘要

This paper is devoted to discover the appropriate base classifier algorithms while employing Rotation Forest as an ensemble learning method for intrusion detection system (IDS) in wireless network. Twenty different classification algorithms are involved in the experiment and their detection performances are assessed using the value of area under receiver operating characteristic curve (AUC) performance metric. The performance result of an ensemble learner are evaluated, including its significant improvement while using diverse machine leaning algorithms as base classifiers. From the experimental result and classifier significant test, it can be revealed that the performance of Rotation Forest has brought significant improvement over the base classifiers.
机译:本文致力于在将旋转森林作为无线网络入侵检测系统(IDS)的集成学习方法的同时,找到合适的基本分类器算法。实验涉及20种不同的分类算法,并使用接收器工作特性曲线(AUC)性能指标下的面积值来评估其检测性能。对集成学习器的性能结果进行了评估,包括使用多种机器学习算法作为基础分类器时的显着改进。从实验结果和分类器的显着性测试可以看出,Rotation Forest的性能比基本分类器有了显着的提高。

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