Performance Of Q-Learning Algorithms In DASH
Journal: International Journal of Advanced Networking and Applications (Vol.11, No. 02)Publication Date: 2019-10-08
Authors : Koffka Khan; Wayne Goodridge;
Page : 4190-4197
Keywords : Q-Learning; stochastic; optimization; DASH; video; bottleneck; network;
Abstract
Q-Learning is an important class of stochastic optimization which has recently been used in the area of dynamic adaptive streaming over HTTP (DASH). Though DASH is very popular method of video delivery in recent years it is plagued with problems when multiple players share a bottleneck link. Thus, this area has become a very active area of research. Two works which implement Q-Learning in DASH are selected and their performances compared against the Conventional DASH player. It is shown that Q-Learning works well for various network conditions.
Other Latest Articles
- Feature Selection Methods For Classifying Email Messages: Analysis, Proposal, And Comparative Study
- Time To Live (TTL) Impact On The Performance Of STAR Protocol In MANETs
- The Future Of Internet Of Things For Anomalies Detection Using Thermography
- Oral Cancer Detection: Feature Extraction & SVM Classification
- Device Capable Of Detecting Cavities And Objects For People With Visual Impairment
Last modified: 2020-08-08 19:20:11