Cellular traffic offloading via Opportunistic Networking with Reinforcement Learning
Lorenzo Valerio, Raffaele Bruno, Andrea Passarella

TL;DR
This paper presents an adaptive reinforcement learning-based method for cellular traffic offloading via opportunistic networks, effectively reducing cellular network load without extra context information.
Contribution
It introduces a novel reinforcement learning framework for offloading control, comparing Actor-Critic and Q-Learning algorithms, and demonstrates superior performance over existing methods.
Findings
Reinforcement learning effectively reduces cellular traffic load.
Actor-Critic outperforms Q-Learning in efficiency.
The system adapts to different mobility scenarios.
Abstract
The widespread diffusion of mobile phones is triggering an exponential growth of mobile data traffic that is likely to cause, in the near future, considerable traffic overload issues even in last-generation cellular networks. Offloading part of the traffic to other networks is considered a very promising approach and, in particular, in this paper, we consider offloading through opportunistic networks of users' devices. However, the performance of this solution strongly depends on the pattern of encounters between mobile nodes, which should therefore be taken into account when designing offloading control algorithms. In this paper, we propose an adaptive offloading solution based on the Reinforcement Learning framework and we evaluate and compare the performance of two well-known learning algorithms: Actor-Critic and Q-Learning. More precisely, in our solution the controller of the…
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Taxonomy
MethodsDiffusion · Q-Learning
