XClose

Institute of Communications and Connected Systems

Home
Menu

A Reinforcement Learning-Based User-Assisted Caching Strategy for Dynamic Content Library in Smal...

IEEE Transactions on Communications | Zhang X, Zheng G, Lambotharan S, Nakhai MR, Wong KK | This paper studies the problem of joint edge cache placement and content delivery in cache-enabled small ...

1 June 2020

A Reinforcement Learning-Based User-Assisted Caching Strategy for Dynamic Content Library in Small Cell Networks

Abstract

This paper studies the problem of joint edge cache placement and content delivery in cache-enabled small cell networks in the presence of spatio-temporal content dynamics unknown a priori. The small base stations (SBSs) satisfy users' content requests either directly from their local caches, or by retrieving from other SBSs' caches or from the content server. In contrast to previous approaches that assume a static content library at the server, this paper considers a more realistic non-stationary content library, where new contents may emerge over time at different locations. To keep track of spatio-temporal content dynamics, we propose that the new contents cached at users can be exploited by the SBSs to timely update their flexible cache memories in addition to their routine off-peak main cache updates from the content server. To take into account the variations in traffic demands as well as the limited caching space at the SBSs, a user-assisted caching strategy is proposed based on reinforcement learning principles to progressively optimize the caching policy with the target of maximizing the weighted network utility in the long run. Simulation results verify the superior performance of the proposed caching strategy against various benchmark designs.

Publication Type:Journal Article
Authors:Zhang X, Zheng G, Lambotharan S, Nakhai MR, Wong KK
Publisher:IEEE
Publication date:01/06/2020
Pagination

3627,3639

JournalIEEE Transactions on Communications
Volume68
Issue 6
StatusPublished
Print ISSN0090-6778
DOI:

http://dx.doi.org/10.1109/TCOMM.2020.2977895

Full Text URL:

https://discovery.ucl.ac.uk/id/eprint/10104021/


Explore how UCL research is advancing the future technologies of a connected world: