Classification of unknown Internet traffic applications using Multiple Neural Network algorithm

Abdelbasst Abbas Mohamed, A. H. Osman, Abdelwahed Motwakel
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引用次数: 4

Abstract

Traffic classification software is an important tool in complex environments like a cloud-based environment for network and device safety. The new methods of traffic classification attempt to benefit from numerical flow characteristics and computer teaching techniques, but minimal supervised knowledge and uncertain applications seriously affect classification efficiency. We propose a new way of dealing with an unknown application issue in the critical situation of a limited supervised training set to achieve an efficient network classification. The proposed model applied the multiple neural network algorithms to predict the unknown application that run through organization internet network. The advantage of the suggested approach is to filter and exclude the unknown internet applications that can be affecting into internet network performance. By Appling proposed method, the internet performance can be improved and the internet traffic and delay of transferred data can be reduced. The proposed method compared with other based line method in term of predication precision accuracy measure.
基于多元神经网络算法的未知互联网流量应用分类
流分类软件是在云环境等复杂环境中保障网络和设备安全的重要工具。新的交通分类方法试图利用数值流特征和计算机教学技术,但监督知识的匮乏和应用的不确定性严重影响分类效率。提出了一种在有限监督训练集危急情况下处理未知应用问题的新方法,以实现高效的网络分类。该模型采用多神经网络算法对组织互联网络中的未知应用进行预测。建议的方法的优点是过滤和排除未知的互联网应用程序,可能会影响到互联网网络的性能。应用该方法可以提高网络性能,降低网络流量和传输数据的延迟。该方法在预测精度、准确度等方面与其他基线法进行了比较。
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