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Get Free AccessIn this paper, the problem of content-aware user clustering and content caching in wireless small cell networks is studied. In particular, a service delay minimization problem is formulated, aiming at optimally caching contents at the small cell base stations (SCBSs). To solve the optimization problem, we decouple it into two interrelated subproblems. First, a clustering algorithm is proposed grouping users with similar content popularity to associate similar users to the same SCBS, when possible. Second, a reinforcement learning algorithm is proposed to enable each SCBS to learn the popularity distribution of contents requested by its group of users and optimize its caching strategy accordingly. Simulation results show that by correlating the different popularity patterns of different users, the proposed scheme is able to minimize the service delay by %42 and 27%, while achieving a higher offloading gain of up to 280% and 90%, respectively, compared to random caching and unclustered learning schemes.
Mohammed S. Elbamby, Mehdi Bennis, Walid Saad, Matti Latva-aho (2014). Content-aware user clustering and caching in wireless small cell networks. , pp. 945-949, DOI: 10.1109/iswcs.2014.6933489.
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Type
Preprint
Year
2014
Authors
4
Datasets
0
Total Files
0
Language
English
DOI
10.1109/iswcs.2014.6933489
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