Latency-Aware Radio Resource Optimization in Learning-Based Cloud-Aided Small Cell Wireless Networks
Tamoor-ul-Hassan Syed, Samarakoon Sumudu, Bennis Mehdi, Matti, Latva-aho

TL;DR
This paper introduces a comprehensive, learning-based framework for optimizing caching, scheduling, and resource allocation in cloud-aided small cell networks to significantly reduce latency in 5G systems.
Contribution
It proposes a novel joint optimization approach using reinforcement learning, spectral clustering, and dynamic grouping to minimize latency and improve resource efficiency.
Findings
Reduces average delay by up to 90% compared to baseline methods.
Uses spectral clustering to accelerate reinforcement learning convergence.
Effectively balances caching, scheduling, and resource allocation under latency constraints.
Abstract
Low latency communication is one of the fundamental requirements for 5G wireless networks and beyond. In this paper, a novel approach for joint caching, user scheduling and resource allocation is proposed for minimizing the queuing latency in serving user's requests in cloud-aided wireless networks. Due to the slow temporal variations in user requests, a time-scale separation technique is used to decouple the joint caching problem from user scheduling and radio resource allocation problems. To serve the spatio-temporal user requests under storage limitations, a Reinforcement Learning (RL) approach is used to optimize the caching strategy at the small cell base stations by minimizing the content fetching cost. A spectral clustering algorithm is proposed to speed-up the convergence of the RL algorithm for a large content caching problem by clustering contents based on user requests.…
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