Empowerment of Atypical Viewers via Low-Effort Personalized Modeling of Video Streaming Quality

Author:

Peroni Leonardo1ORCID,Gorinsky Sergey2ORCID,Tashtarian Farzad3ORCID,Timmerer Christian3ORCID

Affiliation:

1. IMDEA Networks Institute and UC3M, Leganes, Spain

2. IMDEA Networks Institute, Leganes, Spain

3. Alpen-Adria Universität Klagenfurt, Klagenfurt, Austria

Abstract

Quality of Experience (QoE) and QoE models are of an increasing importance to networked systems. The traditional QoE modeling for video streaming applications builds a one-size-fits-all QoE model that underserves atypical viewers who perceive QoE differently. To address the problem of atypical viewers, this paper proposes iQoE (individualized QoE), a method that employs explicit, expressible, and actionable feedback from a viewer to construct a personalized QoE model for this viewer. The iterative iQoE design exercises active learning and combines a novel sampler with a modeler. The chief emphasis of our paper is on making iQoE sample-efficient and accurate. By leveraging the Microworkers crowdsourcing platform, we conduct studies with 120 subjects who provide 14,400 individual scores. According to the subjective studies, a session of about 22 minutes empowers a viewer to construct a personalized QoE model that, compared to the best of the 10 baseline models, delivers the average accuracy improvement of at least 42% for all viewers and at least 85% for the atypical viewers. The large-scale simulations based on a new technique of synthetic profiling expand the evaluation scope by exploring iQoE design choices, parameter sensitivity, and generalizability.

Funder

Austrian Federal Ministry for Digital and Economic Affairs, National Foundation for Research, Technology and Development, and Christian Doppler Research Association

Spanish Ministry of Science and Innovation

Publisher

Association for Computing Machinery (ACM)

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