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基于深度学习的医疗保健多模态网络安全框架

A Multimodal Network Security Framework for Healthcare Based on Deep Learning.

作者信息

Chen Qiang Qiang, Li Jian Ping, Haq Amin Ul, Agbley Bless Lord Y, Hussain Arif, Khan Inayat, Khan Riaz Ullah, Khan Jalaluddin, Ali Ijaz

机构信息

School of Computer Science and Engineering, University of Electronic Science and Technology China, Chengdu 611731, China.

Abdul Wali Khan University Mardan, Mardan 23200, KPK, Pakistan.

出版信息

Comput Intell Neurosci. 2023 Feb 20;2023:9041355. doi: 10.1155/2023/9041355. eCollection 2023.

DOI:10.1155/2023/9041355
PMID:39280017
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11401685/
Abstract

As the network is closely related to people's daily life, network security has become an important factor affecting the physical and mental health of human beings. Network flow classification is the foundation of network security. It is the basis for providing various network services such as network security maintenance, network monitoring, and network quality of service (QoS). Therefore, this field has always been a hot spot of academic and industrial research. Existing studies have shown that through appropriate data preprocessing techniques, machine learning methods can be used to classify network flows, most of which, however, are based on manually and expert-originated feature sets; it is a time-consuming and laborious work. Moreover, only features extracted by a single model can be used in classification tasks, which can easily make the model inefficient and prone to overfitting. In order to solve the abovementioned problems, this study proposes a multimodal automatic analysis framework based on spatial and sequential features. The framework is completely based on the deep learning method and realizes automatic extraction of two types of features, which is very suitable for processing large-flow information; this improves the efficiency of network flow classification. There are two types of frameworks based on pretraining and joint-training, respectively, with analyzing the advantages and disadvantages of them in practice. In terms of evaluation, compared with the previous methods, the experimental results show that the framework has good performance in both accuracy and stability.

摘要

由于网络与人们的日常生活密切相关,网络安全已成为影响人类身心健康的重要因素。网络流量分类是网络安全的基础。它是提供网络安全维护、网络监控和网络服务质量(QoS)等各种网络服务的基础。因此,该领域一直是学术和工业研究的热点。现有研究表明,通过适当的数据预处理技术,可以使用机器学习方法对网络流量进行分类,然而,其中大多数是基于人工和专家生成的特征集;这是一项耗时费力的工作。此外,分类任务中只能使用单个模型提取的特征,这很容易使模型效率低下且容易出现过拟合。为了解决上述问题,本研究提出了一种基于空间和序列特征的多模态自动分析框架。该框架完全基于深度学习方法,实现了两种类型特征的自动提取,非常适合处理大流量信息;这提高了网络流量分类的效率。分别有基于预训练和联合训练的两种类型框架,并在实践中分析了它们的优缺点。在评估方面,与以前的方法相比,实验结果表明该框架在准确性和稳定性方面都具有良好的性能。

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本文引用的文献

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Conformer: Local Features Coupling Global Representations for Recognition and Detection.构象:用于识别和检测的局部特征与全局表示相结合。
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