From QoS Distributions to QoE Distributions: a System's Perspective
Tobias Hossfeld, Poul E. Heegaard, Martin Varela, Lea Skorin-Kapov,, Markus Fiedler

TL;DR
This paper presents a method to derive QoE score distributions from QoS data and user rating models, enabling better understanding of user experience variability without extensive subjective data.
Contribution
It introduces a way to approximate user rating distributions from QoS-to-MOS mappings and second order statistics, linking QoS distributions to QoE score distributions.
Findings
Analytical results for web QoE relating waiting times to QoE.
Numerical results connecting packet loss to video stall patterns.
Method enables QoE distribution estimation without detailed subjective data.
Abstract
In the context of QoE management, network and service providers commonly rely on models that map system QoS conditions (e.g., system response time, paket loss, etc.) to estimated end user QoE values. Observable QoS conditions in the system may be assumed to follow a certain distribution, meaning that different end users will experience different conditions. On the other hand, drawing from the results of subjective user studies, we know that user diversity leads to distributions of user scores for any given test conditions (in this case referring to the QoS parameters of interest). Our previous studies have shown that to correctly derive various QoE metrics (e.g., Mean Opinion Score (MOS), quantiles, probability of users rating "good or better", etc.) in a system under given conditions, there is a need to consider rating distributions obtained from user studies, which are often times not…
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Taxonomy
TopicsImage and Video Quality Assessment · Complex Network Analysis Techniques · Human Mobility and Location-Based Analysis
