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Main Authors: Deng, Mingyu, Han, Shengqian
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.13035
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author Deng, Mingyu
Han, Shengqian
author_facet Deng, Mingyu
Han, Shengqian
contents Deep learning has been widely recognized as a promising approach for optimizing multi-user multi-antenna precoders in traditional cellular systems. However, a critical distinction between cell-free and cellular systems lies in the flexibility of user equipment (UE)-access point (AP) associations. Consequently, the optimal precoder depends not only on channel state information but also on the dynamic UE-AP association status. In this paper, we propose an association-aware graph neural network (AAGNN) that explicitly incorporates association status into the precoding design. We leverage the permutation equivariance properties of the cell-free precoding policy to reduce the training complexity of AAGNN and employ an attention mechanism to enhance its generalization performance. Simulation results demonstrate that the proposed AAGNN outperforms baseline learning methods in both learning performance and generalization capabilities while maintaining low training and inference complexity.
format Preprint
id arxiv_https___arxiv_org_abs_2603_13035
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Association-Aware GNN for Precoder Learning in Cell-Free Systems
Deng, Mingyu
Han, Shengqian
Signal Processing
Machine Learning
Deep learning has been widely recognized as a promising approach for optimizing multi-user multi-antenna precoders in traditional cellular systems. However, a critical distinction between cell-free and cellular systems lies in the flexibility of user equipment (UE)-access point (AP) associations. Consequently, the optimal precoder depends not only on channel state information but also on the dynamic UE-AP association status. In this paper, we propose an association-aware graph neural network (AAGNN) that explicitly incorporates association status into the precoding design. We leverage the permutation equivariance properties of the cell-free precoding policy to reduce the training complexity of AAGNN and employ an attention mechanism to enhance its generalization performance. Simulation results demonstrate that the proposed AAGNN outperforms baseline learning methods in both learning performance and generalization capabilities while maintaining low training and inference complexity.
title Association-Aware GNN for Precoder Learning in Cell-Free Systems
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2603.13035