Performance comparison of forecasting models applied to LAN/MAN traffic prediction

Rivalino Matias, Ana M. M. Carvalho, Valiana A. Teodoro, Daniel Tes, Lucio Borges de Araujo
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引用次数: 2

Abstract

The literature of network traffic analysis has successfully investigated several sophisticated models to be used in computer network traffic forecasting. Although these models have shown very good results in many controlled studies, the complexity of their implementation may be an important factor for preventing their large adoption in real production environment. We advocate that simpler forecasting models can also show very good accuracy — similar to the complex ones — for real scenarios of LAN/MAN network traffic, and being less intricate to implement and deploy in practical network management applications. In this paper we investigate the goodness of fit of nine classic forecast models applied to IP traffic samples drawn from real networks. The obtained results support our hypothesis given that the simpler investigated models demonstrate prediction accuracy very close to the advanced models for the studied scenarios.
应用于局域网/城域网流量预测的预测模型性能比较
网络流量分析的文献已经成功地研究了几种用于计算机网络流量预测的复杂模型。尽管这些模型在许多对照研究中显示出非常好的结果,但其实现的复杂性可能是阻碍其在实际生产环境中广泛采用的重要因素。我们主张,对于局域网/城域网流量的真实场景,更简单的预测模型也可以显示出非常好的准确性——类似于复杂的预测模型,并且在实际的网络管理应用中实现和部署不那么复杂。本文研究了九种经典预测模型的拟合优度,并将其应用于实际网络中的IP流量样本。所得结果支持了我们的假设,即所研究的简单模型在研究情景下的预测精度非常接近高级模型。
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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