An Educated Guess on QoE in Operational Networks through Large-Scale Measurements

Network monitoring and reporting systems as well as network quality benchmarking campaigns use the Average Downlink Throughput (ADT) as the main Key Performance Indicators (KPIs) reflecting the health of the network. In this paper we address the problem of network performance monitoring and assessment in operational networks from a user-centric, Quality of Experience (QoE) perspective. While accurate QoE estimation requires measurements and KPIs collected at multiple levels of the communications stack -- including network, transport, application and end-user layers, we take a practical approach and provide an educated guess on QoE using only a standard ADT-based KPI as input. Armed with QoE models mapping downlink bandwidth to user experience, we estimate the QoE undergone by customers of both cellular and fixed-line networks, using large-scale passive traffic measurements. In particular, we study the performance of three highly popular end-customer services: YouTube, Facebook and WhatsApp. Results suggest that up to 33\% of the observed traffic flows might result in sub-optimal -- or even poor, end-customer experience in both types of network.

[1]  Raimund Schatz,et al.  YouTube & Facebook Quality of Experience in mobile broadband networks , 2012, 2012 IEEE Globecom Workshops.

[2]  Vyas Sekar,et al.  Shedding light on the structure of internet video quality problems in the wild , 2013, CoNEXT.

[3]  Zhuoqing Morley Mao,et al.  QoE Doctor: Diagnosing Mobile App QoE with Automated UI Control and Cross-layer Analysis , 2014, Internet Measurement Conference.

[4]  Phuoc Tran-Gia,et al.  Poster: Understanding YouTube QoE in Cellular Networks with YoMoApp: A QoE Monitoring Tool for YouTube Mobile , 2015, MobiCom.

[5]  Michael Seufert,et al.  Exploring QoE in Cellular Networks: How Much Bandwidth do you Need for Popular Smartphone Apps? , 2015, SIGCOMM 2015.

[6]  Srinivasan Seshan,et al.  Developing a predictive model of quality of experience for internet video , 2013, SIGCOMM.

[7]  Michael Seufert,et al.  YOUQMON: a system for on-line monitoring of YouTube QoE in operational 3G networks , 2013, PERV.

[8]  Pedro Casas,et al.  Vivisecting WhatsApp in Cellular Networks: Servers, Flows, and Quality of Experience , 2015, TMA.

[9]  Xiapu Luo,et al.  Inferring the QoE of HTTP video streaming from user-viewing activities , 2011, W-MUST '11.

[10]  Phuoc Tran-Gia,et al.  Quantification of YouTube QoE via Crowdsourcing , 2011, 2011 IEEE International Symposium on Multimedia.

[11]  Michael Seufert,et al.  Next to You: Monitoring Quality of Experience in Cellular Networks From the End-Devices , 2016, IEEE Transactions on Network and Service Management.

[12]  Markus Fiedler,et al.  Initial delay vs. interruptions: Between the devil and the deep blue sea , 2012, 2012 Fourth International Workshop on Quality of Multimedia Experience.

[13]  Phuoc Tran-Gia,et al.  A Survey on Quality of Experience of HTTP Adaptive Streaming , 2015, IEEE Communications Surveys & Tutorials.

[14]  Boris Nechaev,et al.  Netalyzr: illuminating the edge network , 2010, IMC '10.

[15]  Raimund Schatz,et al.  Quality of Experience in Cloud services: Survey and measurements , 2014, Comput. Networks.

[16]  Srinivasan Seshan,et al.  Modeling web quality-of-experience on cellular networks , 2014, MobiCom.

[17]  Lusheng Ji,et al.  Understanding the impact of network dynamics on mobile video user engagement , 2014, SIGMETRICS '14.

[18]  Shichang Xu,et al.  Mobilyzer: An Open Platform for Controllable Mobile Network Measurements , 2015, MobiSys.

[19]  Anja Feldmann,et al.  A QoE Perspective on Sizing Network Buffers , 2014, Internet Measurement Conference.

[20]  Vyas Sekar,et al.  Understanding the impact of video quality on user engagement , 2011, SIGCOMM.

[21]  Arian Bär,et al.  IP mining: Extracting knowledge from the dynamics of the Internet addressing space , 2013, Proceedings of the 2013 25th International Teletraffic Congress (ITC).

[22]  Shobha Venkataraman,et al.  Prometheus: toward quality-of-experience estimation for mobile apps from passive network measurements , 2014, HotMobile.

[23]  Blazej Lewcio,et al.  Video quality in next generation mobile networks — Perception of time-varying transmission , 2011, 2011 IEEE International Workshop Technical Committee on Communications Quality and Reliability (CQR).