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https://dspace.iiti.ac.in/handle/123456789/5517
Title: | Function Approximation Based Reinforcement Learning for Edge Caching in Massive MIMO Networks |
Authors: | Bhatia, Vimal |
Keywords: | Markov processes;MIMO systems;Multiplexing equipment;Content popularities;Function approximation;Multi input multi output systems;Placement strategy;Poisson point process;Q-learning approach;Update requirement;Wireless communication system;Reinforcement learning |
Issue Date: | 2021 |
Publisher: | Institute of Electrical and Electronics Engineers Inc. |
Citation: | Garg, N., Sellathurai, M., Bhatia, V., & Ratnarajah, T. (2021). Function approximation based reinforcement learning for edge caching in massive MIMO networks. IEEE Transactions on Communications, 69(4), 2304-2316. doi:10.1109/TCOMM.2020.3047658 |
Abstract: | Caching popular contents in advance is an important technique to achieve low latency and reduced backhaul congestion in future wireless communication systems. In this article, a multi-cell massive multi-input-multi-output system is considered, where locations of base stations are distributed as a Poisson point process. Assuming probabilistic caching, average success probability (ASP) of the system is derived for a known content popularity (CP) profile, which in practice is time-varying and unknown in advance. Further, modeling CP variations across time as a Markov process, reinforcement Q-learning is employed to learn the optimal content placement strategy to optimize the long-term-discounted ASP and average cache refresh rate. In the Q-learning, the number of Q-updates are large and proportional to the number of states and actions. To reduce the space complexity and update requirements towards scalable Q-learning, two novel (linear and non-linear) function approximations-based Q-learning approaches are proposed, where only a constant (4 and 3 respectively) number of variables need updation, irrespective of the number of states and actions. Convergence of these approximation-based approaches are analyzed. Simulations verify that these approaches converge and successfully learn the similar best content placement, which shows the successful applicability and scalability of the proposed approximated Q-learning schemes. © 1972-2012 IEEE. |
URI: | https://doi.org/10.1109/TCOMM.2020.3047658 https://dspace.iiti.ac.in/handle/123456789/5517 |
ISSN: | 0090-6778 |
Type of Material: | Journal Article |
Appears in Collections: | Department of Electrical Engineering |
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