ITLGAug 10, 2025

Structured Superposition of Autoencoders for UEP Codes at Intermediate Blocklengths

arXiv:2508.07487v11 citationsh-index: 25IEEE Commun Lett
Originality Incremental advance
AI Analysis

This addresses the problem of scalable and efficient UEP coding for modern communication systems, representing an incremental advancement in applying autoencoders to UEP.

The paper tackles the challenge of designing unequal error protection (UEP) codes at intermediate blocklengths by proposing a structured autoencoder-based architecture, which improves over established achievability bounds of randomized superposition coding-based UEP schemes with SIC decoding.

Unequal error protection (UEP) coding that enables differentiated reliability levels within a transmitted message is essential for modern communication systems. Autoencoder (AE)-based code designs have shown promise in the context of learned equal error protection (EEP) coding schemes. However, their application to UEP remains largely unexplored, particularly at intermediate blocklengths, due to the increasing complexity of AE-based models. Inspired by the proven effectiveness of superposition coding and successive interference cancellation (SIC) decoding in conventional UEP schemes, we propose a structured AE-based architecture that extends AE-based UEP codes to substantially larger blocklengths while maintaining efficient training. By structuring encoding and decoding into smaller AE subblocks, our method provides a flexible framework for fine-tuning UEP reliability levels while adapting to diverse system parameters. Numerical results show that the proposed approach improves over established achievability bounds of randomized superposition coding-based UEP schemes with SIC decoding, making the proposed structured AE-based UEP codes a scalable and efficient solution for next-generation networks.

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