[1]唐群玲,张兴兰.基于特征增强的深度学习入侵检测算法[J].计算机技术与发展,2023,33(06):133-138.[doi:10. 3969 / j. issn. 1673-629X. 2023. 06. 020]
 TANG Qun-ling,ZHANG Xing-lan.Deep Learning Intrusion Detection Algorithm Based on Feature Enhancement[J].,2023,33(06):133-138.[doi:10. 3969 / j. issn. 1673-629X. 2023. 06. 020]
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基于特征增强的深度学习入侵检测算法()

《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
33
期数:
2023年06期
页码:
133-138
栏目:
网络空间安全
出版日期:
2023-06-10

文章信息/Info

Title:
Deep Learning Intrusion Detection Algorithm Based on Feature Enhancement
文章编号:
1673-629X(2023)06-0133-06
作者:
唐群玲张兴兰
北京工业大学 信息学部,北京 100124
Author(s):
TANG Qun-lingZHANG Xing-lan
Department of Information Science,Beijing University of Technology,Beijing 100124,China
关键词:
特征增强入侵检测特征提取准确率分类
Keywords:
feature enhancementintrusion detectionfeature extractionaccuracyclassification
分类号:
TP181
DOI:
10. 3969 / j. issn. 1673-629X. 2023. 06. 020
摘要:
深度学习技术随着社会的不断发展,逐渐应用到了社会生活的各个领域,其中与入侵检测技术相结合已成为当今的研究热点。 在当前不稳定的网络环境下,能够准确识别异常流量是当前入侵检测的主要任务。 传统的神经网络面对复杂的数据,无法准确提取到与分类结果有关的特征,过多的冗余特征会导致模型泛化能力差,检测准确率不高,这会导致深度学习技术无法很好地应用在入侵检测的任务中。 为了解决这个问题,提出了一种基于特征增强的深度学习入侵检测方法,即在模型训练过程中,通过一个辅助网络,增强对分类结果相关的特征,使模型着重学习对分类有益的特征,同时减轻冗余特征对模型分类的影响。 同时,该方法不会修改原有模型的结构,可以轻松地应用在不同的卷积神经网络的模型上。 最后在 NSL-KDD 和 CICIDS2017 数据集上的实验结果表明,准确率最高可达 99. 73% 和 99. 15% 。
Abstract:
Deep learning technology has been gradually applied to various fields of social life with the continuous development of society,among which combining with intrusion detection technology?
has become a hot research topic today. In the current unstable network environment,accurate identification of abnormal traffic is the main task of current intrusion detection. Traditional neural networks cannot accurately extract features related to classification results in the face of complex data,and too many redundant features will lead to poor generalization of the model and low detection accuracy,which will lead to the inability of deep learning techniques to be well applied in thetask of intrusion detection. To solve this problem,we propose a deep learning intrusion detection method based on feature enhancement.During the model training process,the features that are relevant to the classification results are enhanced by an auxiliary network,so thatthe model focuses on learning features that are beneficial to the classification,while mitigating the impact of redundant features on themodel classification. At the same time,the proposed method does not modify the structure of the original model and can be easily appliedto different models of convolutional neural networks. Finally,experiments on the NSL - KDD and CICIDS2017 datasets show that theaccuracy is up to 99. 73% and 99. 15% .

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更新日期/Last Update: 2023-06-10