Network Intrusion Detection System Using Deep Learning Method with KDD Cup'99 Dataset

Jesse Jeremiah Tanimu, Mohamed Hamada, Patience Robert, Anish Mahendran
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引用次数: 1

Abstract

This work is a deep sparse autoencoder network intrusion detection system which addresses the issue of interpretability of L2 regularization technique used in other works. The proposed model was trained using a mini-batch gradient descent technique, L1 regularization technique and ReLU activation function to arrive at a better performance. Results based on the KDDCUP'99 dataset show that our approach provides significant performance improvements over other deep sparse autoencoder Network Intrusion Detection Systems.
基于KDD Cup'99数据集的深度学习网络入侵检测系统
本研究是一个深度稀疏自编码器网络入侵检测系统,它解决了L2正则化技术在其他研究中使用的可解释性问题。采用小批量梯度下降技术、L1正则化技术和ReLU激活函数对模型进行训练,得到了较好的训练效果。基于KDDCUP'99数据集的结果表明,我们的方法比其他深度稀疏自编码器网络入侵检测系统提供了显着的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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