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A Novel Anomaly Detection Method in Wireless Network Using Multi-level Classifier Ensembles

机译:多级分类器集成的无线网络异常检测新方法

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Anomaly detection is very crucial in an intrusion detection task since it has capability to discover new types of attacks. The major challenges of anomaly detection are how to maximize the accuracy while maintaining low positive rate. In this paper, we propose new approach on anomaly detection using multi-level classifier ensembles. We employ an ensemble learner as a base classifier of ensemble rather than a single classifier algorithm. We run several experiments to choose the best combination of two-level classifier ensemble model. From our experimental result, it is revealed that the performance of our proposed approach yields satisfactory results over classical classifier ensembles and single classifiers.
机译:异常检测在入侵检测任务中非常关键,因为它具有发现新型攻击的能力。异常检测的主要挑战是如何在保持低阳性率的同时最大化准确性。在本文中,我们提出了一种使用多级分类器集成进行异常检测的新方法。我们采用集合学习器作为集合的基础分类器,而不是单个分类器算法。我们进行了几次实验,以选择两级分类器集成模型的最佳组合。从我们的实验结果可以看出,与经典分类器集成和单个分类器相比,我们提出的方法的性能产生了令人满意的结果。

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