The unprecedented growth in mobile data usage is posing significant challenges to cellular operators. One key challenge is how to provide quality of service to subscribers when their residing cell is experiencing a significant amount of traffic, i.e. becoming a traffic hotspot. In this paper, we perform an empirical study on data hotspots in today’s cellular networks using a 9-week cellular dataset with 734K+ users and 5327 cell sites. Our analysis examines in details static and dynamic characteristics, predictability, and causes of data hotspots, and their correlation with call hotspots. We show that using standard machine learning methods, future hotspots can be accurately predicted from past observations. We believe the understanding of these key issues will lead to more efficient and responsive resource management and thus better QoS provision in cellular networks. To the best of our knowledge, our work is the first to empirically characterize traffic hotspots in today’s cellular networks.

Understanding and Predicting Data Hotspots in Cellular Networks / A. Nika, A. Ismail, B.Y. Zhao, S. Gaito, G.P. Rossi, H. Zheng. - In: MOBILE NETWORKS AND APPLICATIONS. - ISSN 1383-469X. - 21:3(2016 Jun), pp. 402-413.

Understanding and Predicting Data Hotspots in Cellular Networks

S. Gaito;G.P. Rossi
Penultimo
;
2016

Abstract

The unprecedented growth in mobile data usage is posing significant challenges to cellular operators. One key challenge is how to provide quality of service to subscribers when their residing cell is experiencing a significant amount of traffic, i.e. becoming a traffic hotspot. In this paper, we perform an empirical study on data hotspots in today’s cellular networks using a 9-week cellular dataset with 734K+ users and 5327 cell sites. Our analysis examines in details static and dynamic characteristics, predictability, and causes of data hotspots, and their correlation with call hotspots. We show that using standard machine learning methods, future hotspots can be accurately predicted from past observations. We believe the understanding of these key issues will lead to more efficient and responsive resource management and thus better QoS provision in cellular networks. To the best of our knowledge, our work is the first to empirically characterize traffic hotspots in today’s cellular networks.
English
Cellular networks; Data hotspots; Machine learning; Computer Networks and Communications; Hardware and Architecture; Information Systems; Software
Settore INF/01 - Informatica
Articolo
Comitato scientifico
Ricerca applicata
Pubblicazione scientifica
giu-2016
12-ott-2015
Kluwer Academic Publishers
21
3
402
413
12
Pubblicato
Periodico con rilevanza internazionale
scopus
Aderisco
info:eu-repo/semantics/article
Understanding and Predicting Data Hotspots in Cellular Networks / A. Nika, A. Ismail, B.Y. Zhao, S. Gaito, G.P. Rossi, H. Zheng. - In: MOBILE NETWORKS AND APPLICATIONS. - ISSN 1383-469X. - 21:3(2016 Jun), pp. 402-413.
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Prodotti della ricerca::01 - Articolo su periodico
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262
Article (author)
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A. Nika, A. Ismail, B.Y. Zhao, S. Gaito, G.P. Rossi, H. Zheng
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/347739
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