URL: https://doi.org/10.1145/2390231.2390248
Bibtex Entry:
@inproceedings{2012-Balachandran-hotnets, author = “Balachandran, Athula and Sekar, Vyas and Akella, Aditya and Seshan, Srinivasan and Stoica, Ion and Zhang, Hui”, title = “A Quest for an Internet Video Quality-of-Experience Metric”, year = “2012”, isbn = “9781450317764”, publisher = “Association for Computing Machinery”, address = “New York, NY, USA”, url = “https://doi.org/10.1145/2390231.2390248”, doi = “10.1145/2390231.2390248”, abstract = {An imminent challenge that content providers, CDNs, third-party analytics and optimization services, and video player designers in the Internet video ecosystem face is the lack of a single “gold standard” to evaluate different competing solutions. Existing techniques that describe the quality of the encoded signal or controlled studies to measure opinion scores do not translate directly into user experience at scale. Recent work shows that measurable performance metrics such as buffering, startup time, bitrate, and number of bitrate switches impact user experience. However, converting these observations into a quantitative quality-of-experience metric turns out to be challenging since these metrics are interrelated in complex and sometimes counter-intuitive ways, and their relationship to user experience can be unpredictable. To further complicate things, many confounding factors are introduced by the nature of the content itself (e.g., user interest, genre). We believe that the issue of interdependency can be addressed by casting this as a machine learning problem to build a suitable predictive model from empirical observations. We also show that setting up the problem based on domain-specific and measurement-driven insights can minimize the impact of the various confounding factors to improve the prediction performance.}, booktitle = “Workshop on Hot Topics in Networking (HotNets)”, pages = “97–102”, numpages = “6”, month = “October”, category = “Video”, location = “Redmond, Washington”, series = “HotNets-XI” }