Adversarial Neural Networks for Error Correcting Codes
Hung T. Nguyen, Steven Bottone, Kwang Taik Kim, Mung Chiang, H., Vincent Poor

TL;DR
This paper introduces a novel adversarial training framework for neural decoders in error correcting codes, improving decoding performance and adaptability without needing training labels, inspired by GANs and game theory.
Contribution
It proposes a game-theoretic adversarial framework for neural decoders that enhances decoding accuracy and can adapt online without labeled data.
Findings
Improved decoding performance over traditional algorithms.
Framework aligns with maximum likelihood decoding as a Nash equilibrium.
Can be trained online, adapting to channel changes.
Abstract
Error correcting codes are a fundamental component in modern day communication systems, demanding extremely high throughput, ultra-reliability and low latency. Recent approaches using machine learning (ML) models as the decoders offer both improved performance and great adaptability to unknown environments, where traditional decoders struggle. We introduce a general framework to further boost the performance and applicability of ML models. We propose to combine ML decoders with a competing discriminator network that tries to distinguish between codewords and noisy words, and, hence, guides the decoding models to recover transmitted codewords. Our framework is game-theoretic, motivated by generative adversarial networks (GANs), with the decoder and discriminator competing in a zero-sum game. The decoder learns to simultaneously decode and generate codewords while the discriminator learns…
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Taxonomy
TopicsWireless Signal Modulation Classification · Fractal and DNA sequence analysis
