English

Do not Interfere but Cooperate: A Fully Learnable Code Design for Multi-Access Channels with Feedback

Information Theory 2023-06-02 v1 Signal Processing math.IT

Abstract

Data-driven deep learning based code designs, including low-complexity neural decoders for existing codes, or end-to-end trainable auto-encoders have exhibited impressive results, particularly in scenarios for which we do not have high-performing structured code designs. However, the vast majority of existing data-driven solutions for channel coding focus on a point-to-point scenario. In this work, we consider a multiple access channel (MAC) with feedback and try to understand whether deep learning-based designs are capable of enabling coordination and cooperation among the encoders as well as allowing error correction. Simulation results show that the proposed multi-access block attention feedback (MBAF) code improves the upper bound of the achievable rate of MAC without feedback in finite block length regime.

Keywords

Cite

@article{arxiv.2306.00659,
  title  = {Do not Interfere but Cooperate: A Fully Learnable Code Design for Multi-Access Channels with Feedback},
  author = {Emre Ozfatura and Chenghong Bian and Deniz Gunduz},
  journal= {arXiv preprint arXiv:2306.00659},
  year   = {2023}
}

Comments

5 pages

R2 v1 2026-06-28T10:53:19.131Z