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A deep learning approach for effective intrusion detection in wireless networks using CNN

机译:使用CNN的无线网络有效入侵检测的深度学习方法

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摘要

Security is playing a major role in this Internet world due to the rapid growth of Internet users. The various intrusion detection systems were developed by many researchers in the past to identify and detect the intruders using data mining techniques. However, the existing systems are not able to achieve sufficient detection accuracy when using the data mining. For this purpose, we propose a new intrusion detection system to provide security in data communication by identifying and detecting the intruders effectively in wireless networks. Here, we propose a new feature selection algorithm called conditional random field and linear correlation coefficient-based feature selection algorithm to select the most contributed features and classify them using the existing convolutional neural network. The experiments have been conducted for evaluating the proposed intrusion detection system that achieves 98.88% as overall detection accuracy. The tenfold cross-validation has been done for evaluating the performance of the proposed model.
机译:由于互联网用户的快速增长,安全在互联网世界中发挥了重要作用。各种入侵检测系统是由过去的许多研究人员开发的,用于使用数据挖掘技术来识别和检测入侵者。但是,当使用数据挖掘时,现有系统无法获得足够的检测精度。为此目的,我们提出了一种新的入侵检测系统,通过在无线网络中有效地识别和检测入侵者来提供数据通信中的安全性。这里,我们提出了一种新的特征选择算法,称为条件随机场和基于线性相关系数的特征选择算法,以选择最贡献的特征,并使用现有的卷积神经网络对它们进行分类。已经进行了实验,用于评估所提出的入侵检测系统,以实现98.88%作为总检测精度。已经完成了十倍交叉验证,以评估所提出的模型的性能。

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