A Low-Complexity Framework for Multi-access Coded Caching Systems with Arbitrary User-cache Access Topology
Ting Yang, Kai Wan, Minquan Cheng, Xinping Yi, Robert Caiming Qiu, Giuseppe Caire

TL;DR
This paper introduces a low-complexity, learning-driven framework for multi-access coded caching with arbitrary user-cache access, utilizing graph neural networks to approach theoretical bounds efficiently.
Contribution
It develops a universal, scalable framework using GNNs for coded caching in arbitrary topologies, extending existing models and bounds.
Findings
GNN-based approach achieves near-optimal transmission load.
Framework generalizes across different access topologies and user numbers.
Significantly reduces computational complexity compared to classical algorithms.
Abstract
This paper studies the multi-access coded caching (MACC) problem with arbitrary user-cache access topology, which extends existing MACC models that rely on highly structured and combinatorially designed topologies. We consider a MACC system consisting of a single server, cache-nodes, and user-nodes. The server stores equal-size files, each cache-node has a storage capacity of files, and each user-node can access an arbitrary subset of cache-nodes and retrieve the cached content stored in cache-nodes . The objective is to design a universal framework for the MACC delivery problem. Decoding conflicts among the requested packets are captured by a conflict graph, and the design of the delivery is reduced to a graph coloring problem, where achieving a lower transmission load corresponds to coloring the graph…
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