V. Krishnamoorthi, BUFFEST: Predicting Buffer Conditions and Real-Time Requirements of HTTP(S) Adaptive Streaming Clients, 2017.

G. Dimopoulos, Measuring Video QoE from Encrypted Traffic, IMC, 2016.

F. Wamser, Understanding YouTube QoE in Cellular Networks with YoMoApp-a QoE Monitoring Tool for YouTube Mobile, 2015.

, YoMoApp: A tool for analyzing QoE of YouTube HTTP adaptive streaming in mobile networks, EuCNC, 2015.

V. Aggarwal, Prometheus: Toward quality-of-experience estimation for mobile apps from passive network measurements, 2014.

I. Orsolic, A machine learning approach to classifying YouTube QoE based on encrypted network traffic, Media Tools and Apps, vol.76, issue.21, 2017.

M. H. Mazhar, Real-time video quality of experience monitoring for HTTPS and QUIC, INFOCOM, 2018.

P. Casas, Predicting QoE in cellular networks using machine learning and in-smartphone measurements, 2017.

P. Casas, Next to You: Monitoring Quality of Experience in Cellular Networks From the End-Devices, IEEE Transactions on Network and Service Management, vol.13, issue.2, pp.181-196, 2016.

A. Nikravesh, Mobilyzer: An Open Platform for Controllable Mobile Network Measurements, MobiSys, 2015.

C. Kreibich, Netalyzr: Illuminating the edge network, IMC, 2010.

Q. A. Chen, QoE Doctor: Diagnosing Mobile App QoE with Automated UI Control and Cross-layer Analysis, IMC, 2014.

I. Ketykó, QoE Measurement of Mobile YouTube Video Streaming, 2010.

G. Gómez, YouTube QoE Evaluation Tool for Android Wireless Terminals, EURASIP Journal on Wireless Communications and Networking, vol.2014, issue.164, pp.1-14, 2014.

, ITU-T Recommendation P.800: Methods for Subjective Determination of Transmission Quality, 1996.

, ITU-T Recommendation P.1203: Parametric Bitstream-based Quality Assessment of Progressive Download and Adaptive Audiovisual Streaming Services over Reliable Transport, 2016.