基于参数调优、隐马尔可夫模型和神经网络的网络攻击检测增强深度学习模型

Choukri Djellali, Mehdi Adda
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引用次数: 1

摘要

近年来,深度学习已经成为机器学习成功的关键因素。在本研究中,我们采用隐马尔可夫模型和人工神经网络,将深度学习模型引入到网络攻击检测中。我们使用模型聚合技术来找到一个统一的深度学习模型,以获得更好的数据拟合。采用模型选择技术优化预期预测的偏方差权衡。我们证明了它能够降低收敛性,达到最优解并获得更杂乱的决策边界。攻击检测的实验研究表明,我们提出的模型优于现有的深度学习模型,并提供了增强的泛化。
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An Enhanced Deep Learning Model to Network Attack Detection, by using Parameter Tuning, Hidden Markov Model and Neural Network
In recent years, Deep Learning has become a critical success factor for Machine Learning. In the present study, we introduced a Deep Learning model to network attack detection, by using Hidden Markov Model and Artificial Neural Networks. We used a model aggregation technique to find a single consolidated Deep Learning model for better data fitting. The model selection technique is applied to optimize the bias-variance trade-off of the expected prediction. We demonstrate its ability to reduce the convergence, reach the optimal solution and obtain more cluttered decision boundaries. Experimental studies conducted on attack detection indicate that our proposed model outperformed existing Deep Learning models and gives an enhanced generalization.
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