预测3G网络的切换

Umar Javed, Dongsu Han, R. Cáceres, Jeffrey Pang, S. Seshan, A. Varshavsky
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引用次数: 30

摘要

世界各地的消费者越来越多地在旅途中使用智能手机,并期望始终如一的高质量连接。在蜂窝网络中实现连续连接的关键网络原语是切换。尽管切换对于移动设备保持连接是必要的,但它们也可能导致应用程序性能的短期中断。因此,应用程序能够以合理的精度预测即将到来的切换,并修改它们的行为以应对切换带来的性能下降。在本文中,我们研究了在手持设备上测量的与蜂窝网络条件相关的属性是否可以准确地预测切换。特别是,我们开发了一个机器学习框架来预测在不久的将来的交接。对来自美国大型蜂窝运营商的切换痕迹的评估表明,我们的方法可以达到80%的准确率-比幼稚的预测器提高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 handoffs in 3G networks
Consumers all over the world are increasingly using their smartphones on the go and expect consistent, high quality connectivity at all times. A key network primitive that enables continuous connectivity in cellular networks is handoff. Although handoffs are necessary for mobile devices to maintain connectivity, they can also cause short-term disruptions in application performance. Thus, applications could benefit from the ability to predict impending handoffs with reasonable accuracy, and modify their behavior to counter the performance degradation that accompanies handoffs. In this paper, we study whether attributes relating to the cellular network conditions measured at handsets can accurately predict handoffs. In particular, we develop a machine learning framework to predict handoffs in the near future. An evaluation on handoff traces from a large US cellular carrier shows that our approach can achieve 80% accuracy -- 27% better than a naive predictor.
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