从RADIUS使用数据预测短的802.11会话

Anisa Allahdadi, Ricardo Morla, Ana Aguiar, Jaime S. Cardoso
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引用次数: 14

摘要

在分析用户行为和移动性的背景下,802.11用户会话的持续时间得到了广泛的研究。在这些分析中从不使用或描述短(小于5分钟)会话,因为它们与用户行为无关,并且被认为是无线网络引入的工件。在本文中,我们描述了通过RADIUS认证记录的短802.11会话。通过对波尔图大学Eduroam学术无线网络的5个月追踪,我们发现50%的接入点有70%的会话时间小于5分钟。正是由于短会话是网络引入的产物,所以短会话是网络管理和无线接入质量的重要指标。网络管理器通常不收集和处理会话信息,而是依靠SNMP提供802.11使用数据的摘要。我们开发了一个建模框架来根据SNMP数据预测短会话的数量。我们使用两种回归方法和一种分类技术对每个接入点的数据流建模。我们基于短时会话预测精度来评估这些模型。模型在5个月的数据上进行训练,在3次多项式回归下,预测准确率达到95.27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting short 802.11 sessions from RADIUS usage data
The duration of 802.11 user sessions has been widely studied in the context of analyzing user behavior and mobility. Short (smaller-than-5-minutes) sessions are never used or characterized in these analyses as they are unrelated to user behavior and considered as artifacts introduced by the wireless network. In this paper we characterize short 802.11 sessions as recorded through RADIUS authentication. We show that 50% of access points have 70% of smaller than 5 minutes sessions in a 5 months trace from the Eduroam academic wireless network in the University of Porto. Exactly because they are artifacts introduced by the network, short sessions are an important indicator for network management and the quality of the wireless access. Network managers typically do not collect and process session information but rely on SNMP to provide summaries of 802.11 usage data. We develop a modeling framework to provide predictions for the number of short sessions from SNMP data. We model the data stream of each access point using two methods of regression and one classification technique. We evaluate these models based on short session prediction accuracy. The models are trained on the 5 months data and the best results show prediction accuracy of 95.27% in polynomial regression at degree of 3.
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