基于深度学习的网络流量分类软件升级安全分析方法

Bing Zhang
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引用次数: 1

摘要

目前,软件升级过程中的漏洞对网络安全危害极大。然而,升级漏洞的检测面临着严重的困难和问题。针对当前软件升级漏洞分析问题,提出了一种基于两层数据包和网络流的流量分类神经网络模型。该方法不需要人工提取特征,可以很好地学习数据包与网络之间的依赖关系。它可以充分利用综合流特征进行流量分类。为了对模型进行评估,我们构建了软件升级漏洞数据集,并在CICIDS 2017数据集上进行了相关实验。实验结果表明,与其他RNN模型相比,我们的模型具有最好的性能,达到99.86%的精度和99.44%的F1分数。同时,在预训练模型的基础上,利用软件升级漏洞数据集对模型进行微调,F1得分达到99.78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Software Upgrade Security Analysis Method on Network Traffic Classification using Deep Learning
Nowadays, the vulnerability in the software upgrade process are extremely harmful to network security. However, the detection of upgrade vulnerability is facing serious difficulties and problems. Aiming at the current software upgrade vulnerability analysis problem, we propose a neural network model for traffic classification based on two levels of data packets and network flows. This method does not need to manually extract features and can learn the dependency relationship between data packets and networks well. It can make full use of comprehensive flow features for traffic classification. In order to evaluate the model, we built a dataset of software upgrade vulnerabilities and conducted relevant experiments on the CICIDS 2017 dataset. The experimental results show that compared with other RNN models, our model has the best performance, reaching a precision of 99.86% and an F1 score of 99.44%. At the same time, based on the pre-trained model, we use the software upgrade vulnerability dataset to fine-tuning the model, with the F1 score reaching 99.78%.
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