Title :
A multi-agent Q-Learning-based framework for achieving fairness in HTTP Adaptive Streaming
Author :
Petrangeli, Stefano ; Claeys, Maxim ; Latre, Steven ; Famaey, Jeroen ; De Turck, Filip
Author_Institution :
Dept. of Inf. Technol. (INTEC), iMinds, Ghent Univ., Ghent, Belgium
Abstract :
HTTP Adaptive Streaming (HAS) is quickly becoming the de facto standard for Over-The-Top video streaming. In HAS, each video is temporally segmented and stored in different quality levels. Quality selection heuristics, deployed at the video player, allow dynamically requesting the most appropriate quality level based on the current network conditions. Today´s heuristics are deterministic and static, and thus not able to perform well under highly dynamic network conditions. Moreover, in a multi-client scenario, issues concerning fairness among clients arise, meaning that different clients negatively influence each other as they compete for the same bandwidth. In this article, we propose a Reinforcement Learning-based quality selection algorithm able to achieve fairness in a multi-client setting. A key element of this approach is a coordination proxy in charge of facilitating the coordination among clients. The strength of this approach is three-fold. First, the algorithm is able to learn and adapt its policy depending on network conditions, unlike current HAS heuristics. Second, fairness is achieved without explicit communication among agents and thus no significant overhead is introduced into the network. Third, no modifications to the standard HAS architecture are required. By evaluating this novel approach through simulations, under mutable network conditions and in several multi-client scenarios, we are able to show how the proposed approach can improve system fairness up to 60% compared to current HAS heuristics.
Keywords :
image segmentation; learning (artificial intelligence); multi-agent systems; transport protocols; video signal processing; video streaming; HAS; HAS heuristics; HTTP adaptive streaming; coordination proxy; hypertext transfer protocol; multi-agent Q-learning-based framework; multi-client scenario; over-the-top video streaming; quality selection heuristics; reinforcement learning-based quality selection algorithm; system fairness; video segmentation; video storage; Bandwidth; Quality assessment; Radio frequency; Servers; Standards; Streaming media; Video recording;
Conference_Titel :
Network Operations and Management Symposium (NOMS), 2014 IEEE
Conference_Location :
Krakow
DOI :
10.1109/NOMS.2014.6838245