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Deep Feature Extraction via Sparse Autoencoder for Intrusion Detection System

机译:深度特征提取通过稀疏自动化器进行入侵检测系统

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The massive network traffic and high-dimensional features affect detection performance. In order to improve the efficiency and performance of detection, whale optimization sparse autoencoder model (WO-SAE) is proposed. Firstly, sparse autoencoder performs unsupervised training on high-dimensional raw data and extracts low-dimensional features of network traffic. Secondly, the key parameters of sparse autoencoder are optimized automatically by whale optimization algorithm to achieve better feature extraction ability. Finally, gated recurrent unit is used to classify the time series data. The experimental results show that the proposed model is superior to existing detection algorithms in accuracy, precision, and recall. And the accuracy presents 98.69%. WO-SAE model is a novel approach that reduces the user’s reliance on deep learning expertise.
机译:大规模网络流量和高维功能会影响检测性能。为了提高检测的效率和性能,提出了鲸鱼优化稀疏自动化器模型(WO-SAE)。首先,稀疏的AutoEncoder对高维原始数据执行无监督培训,并提取网络流量的低维功能。其次,稀疏AutoEncoder的关键参数由鲸瓦优化算法自动优化,以实现更好的特征提取能力。最后,使用门控复发单元来分类时间序列数据。实验结果表明,该模型优于现有的准确性检测算法,精度,精度和召回。准确率为98.69%。 WO-SAE模型是一种新颖的方法,可降低用户对深度学习专业知识的依赖。

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