Mobile Network Traffic Prediction Using MLP, MLPWD, and SVM

A. Nikravesh, S. Ajila, Chung-Horng Lung, Wayne Ding
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引用次数: 74

Abstract

Mobile networks are critical for today's social mobility and the Internet. More and more people are subscribing to mobile networks, which has led to substantial demands. The network operators need to find ways of meeting the huge demands. Since mobile network resources, such as spectrum, are expensive, there is a need for efficient management of network resources as well as finding a way to predict future use for network management and planning. Network planning is crucial for network operators to provide services that are both cost effective and have high degree of quality of service (QoS). The aim of this research is to apply data analysis techniques to support network operators to maximize the resource usage for network operators, that is, to prevent both under-provisioning and over-provisioning. Therefore, this paper investigates the prediction accuracy of machine learning techniques - Multi-Layer Perceptron (MLP), Multi-Layer Perceptron with Weight Decay (MLPWD), and Support Vector Machines (SVM) - using a dataset from a commercial trial mobile network. The experimental results show that SVM outperforms MLP and MLPWD in predicting the multidimensionality of the real-life network traffic data, while MLPWD has better accuracy in predicting the unidimensional data. Our experimental results can help network operators predict future demands and facilitate provisioning and placement of mobile network resources for effective resource management.
基于MLP、MLPWD和SVM的移动网络流量预测
移动网络对当今的社会流动性和互联网至关重要。越来越多的人订阅移动网络,这导致了巨大的需求。网络运营商需要找到满足巨大需求的方法。由于频谱等移动网络资源非常昂贵,因此需要对网络资源进行有效管理,并找到一种方法来预测网络管理和规划的未来使用情况。网络规划对于网络运营商提供既具有成本效益又具有高服务质量(QoS)的业务至关重要。本研究的目的是应用数据分析技术来支持网络运营商最大限度地利用网络运营商的资源,即防止供应不足和供应过剩。因此,本文研究了机器学习技术的预测精度-多层感知器(MLP),多层感知器与权重衰减(MLPWD)和支持向量机(SVM) -使用来自商业试验移动网络的数据集。实验结果表明,SVM在预测实际网络流量数据的多维度方面优于MLP和MLPWD,而MLPWD在预测一维数据方面具有更好的准确性。我们的实验结果可以帮助网络运营商预测未来的需求,并促进移动网络资源的配置和放置,从而实现有效的资源管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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