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基于深度堆栈编码器和反向传播算法的网络安全态势要素识别
引用本文:寇广, 王硕, 张达. 基于深度堆栈编码器和反向传播算法的网络安全态势要素识别[J]. 电子与信息学报, 2019, 41(9): 2187-2193. doi: 10.11999/JEIT181014
作者姓名:寇广  王硕  张达
作者单位:1.国防科技创新研究院人工智能研究中心 北京 100072;;2.信息工程大学 郑州 450001
摘    要:网络安全态势要素识别的基础是对态势数据集进行有效的特征提取。针对反向传播(BP)神经网络对海量安全态势信息数据学习时过度依赖数据标签的问题,该文提出一种结合深度堆栈编码器和反向传播算法的网络安全态势要素识别方法,通过无监督学习算法逐层训练网络,在此基础上堆叠得到深度堆栈编码器,利用编码器提取数据集特征,实现了网络的无监督训练。仿真实验验证了该方法能有效提升安全态势感知的效能和准确度。

关 键 词:网络安全态势   反向传播神经网络   堆栈编码器   数据分析
收稿时间:2018-11-05
修稿时间:2019-03-18

Recognition of Network Security Situation Elements Based on Depth Stack Encoder and Back Propagation Algorithm
Guang KOU, Shuo WANG, Da ZHANG. Recognition of Network Security Situation Elements Based on Depth Stack Encoder and Back Propagation Algorithm[J]. Journal of Electronics & Information Technology, 2019, 41(9): 2187-2193. doi: 10.11999/JEIT181014
Authors:Guang KOU  Shuo WANG  Da ZHANG
Affiliation:1. Artificial Intelligence Research Center, National Innovation Institute of Defense Technology, Beijing 100072, China;;2. Information Engineering University, Zhengzhou 450001, China
Abstract:The basis of the identification of network security situation element is to perform the feature extraction of situation data effectively. Considering the problem that the Back Propagation(BP) neural networks have excessive dependence on data labels when it has a learning of massive security situation information data, a network security situation element identification method is proposed, which combines deep stack encoder and BP algorithm. It trains the network layer by layer through unsupervised learning algorithm. On this basis the deep track encoder by stacking can be obtained. The unsupervised training of the network is realized when using the encoder to extract the characteristic of the data sets. It is verified by simulation experiments that the method can improve the performance and accuracy of situational awareness effectively.
Keywords:Network security situation  Back Propagation(BP) neural network  Stack encoder  Data analysis
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