卷积神经网络层对基于有效负载的流量分类的影响

Wafaa Alharthi, R. Ouni, K. Saleem
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引用次数: 0

摘要

在现代网络中,不同的应用产生不同类型的流量,业务需求也不同。在网络流量分类中,“未知应用”被认为是一个尚未解决的难题,特别是在医疗保健领域。流分类有助于将流量分类和聚合为具有相同流量模式的类别。流量的识别和分类对网络管理效率至关重要,包括服务质量(QoS)、入侵检测和合法拦截。只有基于有效负载的网络流分类技术是合适的,因为大多数应用程序都是基于IP的,无论是附加到特定的端口号,还是动态的或临时的。基于有效负载的分类器包括查找数据包有效负载中的特征,以区分应用程序协议。在这项工作中,我们提出了一个使用机器学习(ML)进行准确高效流量分类的模型。ML允许在没有网络运营商干扰的情况下通过对流量进行分类来自动响应各种应用程序。实验结果表明,基于机器学习的流量分类方法是有效的,在现有模型面前具有较高的准确率和较低的数据损失率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Convolutional Neural Network Layers on Payload-Based Traffic Classification
Different applications in modern networks produce various types of traffic with diverse service requirements. In the network traffic classification, "unknown applications" are regarded as a difficult problem that remains unsolved, especially in the healthcare sector. Traffic classification helps in classifying and aggregate traffic flows into categories with the same traffic patterns. Identification and classification of traffic are critical for network management efficiency, which includes Quality of Service (QoS), detection of intrusions, and lawful interception. Only the network traffic classification technology based on payloads is fitting because most of the applications are IP based, whether is attached to a specific port number or is dynamic or is temporary. Payload-based classifiers consist of finding the features in the payload of data packets to differentiate between the application protocols. In this work, we propose a model using machine learning (ML) for an accurate and efficient traffic classification. ML allows for an automatic response to various applications by classifying traffic without a network operator interference. Experimental results demonstrate that ML-based traffic classification methods are effective and obtained high accuracy and a low data loss rate in front of other available models.
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