A stacked ensemble learning model using heterogeneous base-leaners for information security intrusion detection

Chen Chen, Yajiang Qi, Xiaoyan Ye, Guanghua Wang, Lintao Yang, Haiyue Ji
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引用次数: 0

Abstract

In network intrusion detection, using a machine learning method alone has blind spots and low detection accuracy. A stacked ensemble learning model using heterogeneous base-leaners for information security intrusion detection is proposed. Firstly, the convolution neural network is used to extract the deep information in the original data set, which is normalized as the input of the model. In constructing base classifiers, different heterogeneous model combinations are used to enhance the diversity of base classifiers. Experiments on NSL-KDD dataset show that the proposed model can comprehensively improve the detection accuracy, accuracy, recall and F1-score.
基于异构基础学习器的信息安全入侵检测的堆叠集成学习模型
在网络入侵检测中,单独使用机器学习方法存在盲点,检测精度不高。提出了一种基于异构基础学习器的信息安全入侵检测的堆叠集成学习模型。首先,利用卷积神经网络提取原始数据集中的深度信息,并将其归一化作为模型的输入;在构建基分类器时,采用不同的异构模型组合来增强基分类器的多样性。在NSL-KDD数据集上的实验表明,该模型能全面提高检测准确率、准确率、查全率和f1分数。
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20 weeks
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