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Applying Recurrent Neural Network to Intrusion Detection with Hessian Free Optimization

机译:将经常性神经网络应用于Hessian免费优化的入侵检测

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With developing a network communication technology, cyber attacks which threaten users safety are increasing. Consequently, many studies are being carried out to protect the user security. One of them is an intrusion detection system (IDS). In this paper, we apply recurrent neural network with hessian-free optimization which is one of the deep learning algorithm for intrusion detection. We use DARPA dataset in order to train and test the intrusion detection model. It was used for the 1999 KDD Cup contest dataset. It composed of 41 features and 22 different attacks. We chose salient features for training the model and analyzed a result of experiment with various metrics. We found that our result is superior to the existing studies through comparing the performance.
机译:随着网络通信技术,威胁用户安全的网络攻击正在增加。因此,正在进行许多研究以保护用户安全性。其中一个是入侵检测系统(IDS)。在本文中,我们将经常性神经网络应用于Hessian的优化,这是用于入侵检测的深度学习算法之一。我们使用DARPA数据集以培训和测试入侵检测模型。它用于1999年KDD Cup竞赛数据集。它由41个功能组成和22种不同的攻击。我们选择了培训模型的显着特征,并分析了各种度量的实验结果。我们发现我们的结果通过比较性能来优于现有的研究。

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