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Wi-Fi intrusion detection using weighted-feature selection for neural networks classifier

机译:Wi-Fi入侵检测使用神经网络分类器的加权特征选择

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Feature learning plays an important role in improving the learning capability of any machine learner by reducing the data complexity. As one of feature learning methods, feature selection has a crucial role for a machine learning with huge and complex input data. We examine the feature weighting methods in existing machine learners and look at how they could be used for the accurate selection of the important features. In order to validate our idea, we consider Wi-Fi networks since pervasive Internet-of-Things (IoT) devices create huge traffics and vulnerable at the same time. Detecting known and unknown attacks in Wi-Fi networks remains great challenging tasks. We test and validate the feasibility of the selected features using a common neural network. This study demonstrates that the proposed weighted-based machine learning model can outperform other filter-based feature selection models. The experimental results not only demonstrate the effectiveness of the proposed model, achieving 99.72% F1 score, but also prove that combining a weight-based feature selection method with a light machine-learning classifier which leads to significantly improved performance, compared to the best result reported in the literature.
机译:特征学习通过降低数据复杂性来提高任何机器学习者的学习能力,在提高任何机器学习者的学习能力方面发挥着重要作用。作为特征学习方法之一,特征选择对于具有巨大和复杂输入数据的机器学习具有至关重要的作用。我们检查现有机器学习者中的功能加权方法,并查看它们如何用于精确选择重要功能。为了验证我们的想法,我们考虑Wi-Fi网络以来,自普遍的互联网(物联网)设备同时创建巨大的流行和脆弱。检测Wi-Fi网络中的已知和未知攻击仍然存在巨大的挑战性任务。我们使用公共神经网络测试和验证所选功能的可行性。本研究表明,所提出的加权机器学习模型可以优于其他基于滤波器的特征选择模型。实验结果不仅证明了所提出的模型的有效性,实现了99.72 %F 1 得分,还可以证明将基于权重的特征选择方法与光机学习分类器相结合,这导致与文献中报告的最佳结果相比,性能显着提高。

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