Measuring temporal redundancy in sequences of video requests in a News-on-Demand service
•We analyze the level of redundancy in sequences of video requests in six Spanish digital newspapers.•Regularity in sequences of video requests has been studied with a partial and a global redundancy method.•Partial redundancy is independent from the user and time evolution.•A global and a partial m...
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Veröffentlicht in: | Telematics and informatics 2014-08, Vol.31 (3), p.444-458 |
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Sprache: | eng |
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Zusammenfassung: | •We analyze the level of redundancy in sequences of video requests in six Spanish digital newspapers.•Regularity in sequences of video requests has been studied with a partial and a global redundancy method.•Partial redundancy is independent from the user and time evolution.•A global and a partial model is proposed for each newspaper, in order to forecast video requests.
Streaming media is becoming one of the major components of Internet traffic. Therefore, a better understanding of users’ video request patterns is essential, in order to design an effective and efficient video distribution system (caching, storage capacity, bandwidth, etc.). In this paper, the core issue will be the analysis and modeling of video requests temporal redundancy. The study will be centered on a News-on-Demand (NoD) service, which provides support to a wide variety of digital newspaper editions from different regions of Spain. Specifically, six digital newspapers with a high number of requests were analyzed during a period of one year. The level of redundancy has been measured by a global (gR) and a partial redundancy (pR) method, which is new in this type of services. As a result, the main contribution of our paper is a global and partial redundancy model for each digital newspaper, which would allow us to forecast the level of video requests likely to be repeated in the near future. The model turned out to be user independent and with a timeless effect. The validation process shows that all the models successfully pass the hypothesis test, which means that there were no significant differences between the model and the real data. The pR models could predict between 1% and 6% of video requests temporal redundancy with a level of accuracy which varies between 88% and 100%. |
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ISSN: | 0736-5853 1879-324X |
DOI: | 10.1016/j.tele.2013.10.006 |