基于深度学习方法的网络安全态势预测

Zhixing Lin, Jian Yu, Shunfa Liu
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引用次数: 1

摘要

网络安全态势感知是网络空间安全技术研究的重要问题之一。本文采用深度学习技术对网络数据进行分析学习,通过分类生成计数器网络进行样本放大,使用稀疏降噪自编码器进行特征选择,然后使用LSTM进行安全态势预测的深度学习模型。由于编码器- lstm网络安全态势预测模型可以解决针对少量的各级攻击,因此在较长时间内准确地利用模型预测结果进行区域安全态势预测具有优势。为解决上述问题,网络安全管理由被动变为主动,提前采取相应措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The prediction of network security situation based on deep learning method
Network security situational awareness is one of the important issues in the research of network space security technology. In this paper, deep learning technology is applied to analyse and learn network data, generate counter network by classification for sample amplification, use sparse noise reduction autoencoder for feature selection, and then use LSTM for deep learning model of security situation prediction. After the experiment proved that the proposed model based on sparse noise reduction is not balanced since the encoder-LSTM network security situation prediction model can solve various level attacks against a small number, using the model prediction results accurately in predicting regional security situation has the advantage for a longer time. In order to solve the above problems, the network security management becomes passive to active, adapting measures in advance.
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