基于机器学习的物联网特征选择与动态网络流量拥塞分类

Ahmed A. Elngar, Adriana Burlea‐Schiopoiu
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引用次数: 2

摘要

网络流量拥塞分类器是网络监控系统的重要组成部分。网络流量表征是一种将流量划分为支持不同属性的若干类的方法。本文提出了基于有效负载的网络流量分类方法。具有广泛的应用范围,如网络安全评估、入侵识别、QoS供应商等;此外,它对调查网络中不同的可疑运动具有重要意义。许多监督分类技术,如支持向量机和无监督聚类方法,如K-Means连接被用于流量分类。在当前的网络条件下,最小的监督数据和不熟悉的应用影响了通常的分类过程的性能。本文实现了一种使用聚类、特征提取和物联网(IoT)变化的网络流量分类方法。进一步,将K-Means用于网络流量聚类数据集,并对分组信息进行特征提取。KNN、Naïve贝叶斯和决策树分类方法根据提取的特征对网络流量进行分类,这是这些分类算法之间的性能度量。研究结果讨论了网络拥塞分类的最佳机器学习算法。从结果来看,使用网络分类(Decision Tree)的聚类(k-means)比其他聚类和网络分类的准确率更高,达到86.45%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Selection and Dynamic Network Traffic Congestion Classification based on Machine Learning for Internet of Things
The network traffic congestion classifier is essential for network monitoring systems. Network traffic characterization is a methodology to classify traffic into several classes supporting various attributes. In this paper, payload-based classification is suggested for network traffic characterization. It has a broad scope of utilization like network security assessment, intrusion identification, QoS supplier, et cetera; furthermore, it has significance in investigating different suspicious movements in the network. Numerous supervised classification techniques like Support Vector Machines and unsupervised clustering methods like K-Means connected are used in traffic classification. In current network conditions, minimal supervised data and unfamiliar applications influence the usual classification procedure's performance. This paper implements a methodology for network traffic classification using clustering, feature extraction, and variety for the Internet of Things (IoT). Further, K-Means is used for network traffic clustering datasets, and feature extraction is performed on grouped information. KNN, Naïve Bayes, and Decision Tree classification methods classify network traffic because of extracted features, which presents a performance measurement between these classification algorithms. The results discuss the best machine learning algorithm for network congestion classification. According to the outcome, clustering (k-means) with network classification (Decision Tree) generates a higher accuracy, 86.45 %, than other clustering and network classification
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