Understanding mobile Internet usage behavior

Exploring the semantic contents of mobile traffic has significant meaning for Telco operators to gain a better understanding of the traffic generated by their subscribers. The mobile traffic dynamics do not only provide guidance for operators in terms of network planning and resource management, they also help operators to innovate new business models by providing value-added services. The mobile traffic dynamics are not static features. They are developing with the evolution of radio access technologies, subscribers' adoption of mobile services, etc. In this paper, we analyze the mobile traffic from multiple dimensions based on a large-scale dataset collected by a major European mobile operator in 2012. Within this work, we investigate the traffic dynamics and the application features used by different mobile devices. Moreover, for the first time, we also present a methodology about how to link these metrics to the operating system of mobile devices. We observed a noticeable impact of the operating system on some of the evaluated features.

[1]  A. Wolisz,et al.  Primary Users in Cellular Networks: A Large-Scale Measurement Study , 2008, 2008 3rd IEEE Symposium on New Frontiers in Dynamic Spectrum Access Networks.

[2]  G. Madey,et al.  Uncovering individual and collective human dynamics from mobile phone records , 2007, 0710.2939.

[3]  Shobha Venkataraman,et al.  Characterizing data usage patterns in a large cellular network , 2012, CellNet '12.

[4]  Xueli An,et al.  Dynamic Scaling of Call-Stateful SIP Services in the Cloud , 2012, Networking.

[5]  Samir Ranjan Das,et al.  Understanding traffic dynamics in cellular data networks , 2011, 2011 Proceedings IEEE INFOCOM.

[6]  Kostas Pentikousis,et al.  Active goodput measurements from a public 3G/UMTS network , 2005, IEEE Communications Letters.

[7]  Lixin Gao,et al.  Profiling users in a 3g network using hourglass co-clustering , 2010, MobiCom.

[8]  Carol A. Taylor,et al.  A framework for understanding mobile internet motivations and behaviors , 2008, CHI Extended Abstracts.

[9]  Sharad Goel,et al.  Who Does What on the Web: A Large-Scale Study of Browsing Behavior , 2012, ICWSM.

[10]  Harry Eugene Stanley,et al.  Calling patterns in human communication dynamics , 2013, Proceedings of the National Academy of Sciences.

[11]  Ravi Kumar,et al.  A characterization of online browsing behavior , 2010, WWW '10.

[12]  Shobha Venkataraman,et al.  Understanding the complexity of 3G UMTS network performance , 2013, 2013 IFIP Networking Conference.

[13]  Louis Plissonneau,et al.  Mobile data traffic analysis: How do you prefer watching videos? , 2010, 2010 22nd International Teletraffic Congress (lTC 22).

[14]  Albert-László Barabási,et al.  Understanding individual human mobility patterns , 2008, Nature.

[15]  Ying Zhang,et al.  Understanding the characteristics of cellular data traffic , 2012, CCRV.

[16]  Hans-Peter Kriegel,et al.  A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise , 1996, KDD.

[17]  Qiang Xu,et al.  Identifying diverse usage behaviors of smartphone apps , 2011, IMC '11.

[18]  Wing Cheong Lau,et al.  An Empirical Study on the Capacity and Performance of 3G Networks , 2008, IEEE Transactions on Mobile Computing.

[19]  Deborah Estrin,et al.  Diversity in smartphone usage , 2010, MobiSys '10.

[20]  Andrey V. Savkin,et al.  Mobility modelling and trajectory prediction for cellular networks with mobile base stations , 2003, MobiHoc '03.

[21]  Hamid Harroud,et al.  Traffic analysis for GSM networks , 2009, 2009 IEEE/ACS International Conference on Computer Systems and Applications.

[22]  A. Liu,et al.  Characterizing and modeling internet traffic dynamics of cellular devices , 2011, PERV.