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Network Intrusion Detection Based on Stacked Sparse Autoencoder and Binary Tree Ensemble Method

机译:基于堆叠稀疏自动阳极和二叉树合奏方法的网络入侵检测

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With the increasing of network attacks, the traditional machine learning method can not solve the classification problem of massive intrusion data effectively. This paper proposes a Xgboost based on stacked sparse autoencoder network(SSAE-XGB) method to learn latent representation of original data. Due to inconsistent category distribution of training and test dataset, we use the sparsity constraint to enhance the generalization ability of the model. Stacked sparse autoencoder network is employed to reduce the dimension of high-dimensional and unlabeled original data, so as to obtain the deep feature representation of the original data. Due to the class imbalance of intrusion data, this paper proposes a novel hybrid classifier, which is constructed by using binary tree and ensemble method. Our experiments with all NSL-KDD dataset demonstrate that our proposed SSAE-XGB binary tree and ensemble method can achieve incredibly high performance in terms of F1 and it outperforms the previous work.
机译:随着网络攻击的增加,传统的机器学习方法无法有效解决大规模入侵数据的分类问题。本文提出了一种基于堆叠稀疏自动频率网络(SSAE-XGB)方法的XGBoost来学习原始数据的潜在表示。由于类别不一致的培训和测试数据集分布,我们使用稀疏性约束来提高模型的泛化能力。采用堆叠稀疏的AutoEncoder网络来减少高维和未标记的原始数据的维度,以便获得原始数据的深度特征表示。由于入侵数据的阶级不平衡,本文提出了一种新颖的混合分类器,其通过使用二叉树和集合方法来构造。我们与所有NSL-KDD DataSet的实验表明,我们所提出的SSAE-XGB二叉树和集合方法可以在F1方面实现令人难以置信的高性能,并且它优于上一个工作。

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