Should I stay or should I go: Analysis of the impact of application QoS on user engagement in YouTube

To improve the quality of experience (QoE), especially under moderate to high traffic demand, it is important to understand the impact of the network and application QoS on user experience. This paper comparatively evaluates the impact of impairments, their intensity and temporal dynamics, on user engagement in the context of video streaming. The analysis employed two large YouTube datasets. To characterize the user engagement and the impact of impairments, several new metrics were defined. We assessed whether or not there is a statistically significant relationship between different types of impairments and QoE and user engagement metrics, taking into account not only the characteristics of the impairments but also the covariates of the session (e.g., video duration, mean datarate). After observing the relationships across the entire dataset, we tested whether these relationships also persist under specific conditions with respect to the covariates. The introduction of several new metrics and of various covariates in the analysis are two innovative aspects of this work. We found that the number of negative bitrate changes (BR-) is a stronger predictor of abandonment than rebufferrings (RB). Even positive bitrate changes (BR+) are associated with increases in abandonment. Specifically, BR+ in low resolution sessions is not well received. Temporal dynamics of the impairments have also an impact: a BR- that follows much later a RB appears to be perceived as a worse impairment than a BR- that occurs immediately after a RB. These results can be used to guide the design of the video streaming adaptation as well as suggest which parameters should be varied in controlled field studies.

[1]  Alexander Raake,et al.  Pippi Longstocking calculus for temporal stimuli pattern on YouTube QoE: 1+1=3 and 1·4≠4·1 , 2013, MoVid '13.

[2]  Mamadou Tourad Diallo,et al.  Impacts of video Quality of Experience on User Engagement in a live event , 2014, 2014 IEEE International Conference on Multimedia and Expo Workshops (ICMEW).

[3]  Jeff Hecht All smart, no phone , 2014, IEEE Spectrum.

[4]  Lea Skorin-Kapov,et al.  A machine learning approach to classifying YouTube QoE based on encrypted network traffic , 2017, Multimedia Tools and Applications.

[5]  Nikos Fotiou,et al.  QOE Performance Evaluation of Youtube Video Streaming in Mobile Broadband Networks , 2018, 2018 IEEE 19th International Symposium on "A World of Wireless, Mobile and Multimedia Networks" (WoWMoM).

[6]  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.

[7]  Phuoc Tran-Gia,et al.  YoMoApp: A tool for analyzing QoE of YouTube HTTP adaptive streaming in mobile networks , 2015, 2015 European Conference on Networks and Communications (EuCNC).

[8]  Markus Fiedler,et al.  Quality of Experience from user and network perspectives , 2010, Ann. des Télécommunications.

[9]  Miska M. Hannuksela,et al.  Does context matter in quality evaluation of mobile television? , 2008, Mobile HCI.

[10]  Phuoc Tran-Gia,et al.  Modeling the YouTube stack: From packets to quality of experience , 2016, Comput. Networks.

[11]  M. Angela Sasse,et al.  Do Users Always Know What's Good For Them? Utilising Physiological Responses to Assess Media Quality , 2000, BCS HCI.

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

[13]  Ramesh K. Sitaraman,et al.  Video Stream Quality Impacts Viewer Behavior: Inferring Causality Using Quasi-Experimental Designs , 2012, IEEE/ACM Transactions on Networking.

[14]  David Hands,et al.  A Study of the Impact of Network Loss and Burst Size on Video Streaming Quality and Acceptability , 1999, IDMS.

[15]  Maria Papadopouli,et al.  On user-centric analysis and prediction of QoE for video streaming using empirical measurements , 2016, 2016 Eighth International Conference on Quality of Multimedia Experience (QoMEX).

[16]  Henning Schulzrinne,et al.  YouSlow : What Influences User Abandonment Behavior for Internet Video ? , 2016 .

[17]  Antonio Liotta,et al.  Predicting quality of experience in multimedia streaming , 2009, MoMM.

[18]  Klara Nahrstedt,et al.  Quality of experience in distributed interactive multimedia environments: toward a theoretical framework , 2009, ACM Multimedia.

[19]  Vlado Menkovski,et al.  Online QoE prediction , 2010, 2010 Second International Workshop on Quality of Multimedia Experience (QoMEX).

[20]  Gustavo de Veciana,et al.  Video Quality Assessment on Mobile Devices: Subjective, Behavioral and Objective Studies , 2012, IEEE Journal of Selected Topics in Signal Processing.

[21]  Markus Fiedler,et al.  Testing the IQX Hypothesis for Exponential Interdependency between QoS and QoE of Voice Codecs iLBC and G.711 , 2008 .

[22]  Margaret H. Pinson,et al.  A new standardized method for objectively measuring video quality , 2004, IEEE Transactions on Broadcasting.

[23]  Vlado Menkovski,et al.  Optimized online learning for QoE prediction , 2009 .

[24]  Phuoc Tran-Gia,et al.  Predicting QoE in cellular networks using machine learning and in-smartphone measurements , 2017, 2017 Ninth International Conference on Quality of Multimedia Experience (QoMEX).

[25]  Peter Schelkens,et al.  Qualinet White Paper on Definitions of Quality of Experience , 2013 .

[26]  Henning Schulzrinne,et al.  QoE matters more than QoS: Why people stop watching cat videos , 2016, IEEE INFOCOM 2016 - The 35th Annual IEEE International Conference on Computer Communications.

[27]  Marcus Barkowsky,et al.  The Influence of Subjects and Environment on Audiovisual Subjective Tests: An International Study , 2012, IEEE Journal of Selected Topics in Signal Processing.

[28]  Jaideep Chandrashekar,et al.  Predicting user dissatisfaction with Internet application performance at end-hosts , 2013, 2013 Proceedings IEEE INFOCOM.

[29]  Chang Wen Chen,et al.  A study on perception of mobile video with surrounding contextual influences , 2012, 2012 Fourth International Workshop on Quality of Multimedia Experience.

[30]  Wolfgang Kellerer,et al.  YouTube Can Do Better: Getting the Most Out of Video Adaptation , 2016, 2016 28th International Teletraffic Congress (ITC 28).

[31]  Regan L. Mandryk,et al.  Using psychophysiological techniques to measure user experience with entertainment technologies , 2006, Behav. Inf. Technol..

[32]  Alan C. Bovik,et al.  Temporal hysteresis model of time varying subjective video quality , 2011, 2011 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

[33]  Kuan-Ta Chen,et al.  OneClick: A Framework for Measuring Network Quality of Experience , 2009, IEEE INFOCOM 2009.

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

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