Affiliation:
1. Carnegie Mellon University
2. AT&T Labs - Research
3. Carnegie Mellon Univeristy
Abstract
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.
Publisher
Association for Computing Machinery (ACM)
Cited by
5 articles.
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1. Instability in Distributed Mobility Management;ACM SIGMETRICS Performance Evaluation Review;2016-06-30
2. Instability in Distributed Mobility Management;Proceedings of the 2016 ACM SIGMETRICS International Conference on Measurement and Modeling of Computer Science;2016-06-14
3. Control-plane protocol interactions in cellular networks;ACM SIGCOMM Computer Communication Review;2015-02-25
4. Control-plane protocol interactions in cellular networks;Proceedings of the 2014 ACM conference on SIGCOMM;2014-08-17
5. Using big data for more dependability;Proceedings of the 9th Workshop on Hot Topics in Dependable Systems;2013-11-03