LGITMLJul 2, 2018

Deepcode: Feedback Codes via Deep Learning

arXiv:1807.00801v1169 citations
Originality Highly original
AI Analysis

This solves a long-standing problem in coding theory for reliable communication with feedback, with potential broad implications for the field.

The authors tackled the problem of designing practical feedback codes for the Gaussian noise channel, which had not been successfully constructed before, and achieved codes that outperform known codes by 3 orders of magnitude in reliability.

The design of codes for communicating reliably over a statistically well defined channel is an important endeavor involving deep mathematical research and wide-ranging practical applications. In this work, we present the first family of codes obtained via deep learning, which significantly beats state-of-the-art codes designed over several decades of research. The communication channel under consideration is the Gaussian noise channel with feedback, whose study was initiated by Shannon; feedback is known theoretically to improve reliability of communication, but no practical codes that do so have ever been successfully constructed. We break this logjam by integrating information theoretic insights harmoniously with recurrent-neural-network based encoders and decoders to create novel codes that outperform known codes by 3 orders of magnitude in reliability. We also demonstrate several desirable properties of the codes: (a) generalization to larger block lengths, (b) composability with known codes, (c) adaptation to practical constraints. This result also has broader ramifications for coding theory: even when the channel has a clear mathematical model, deep learning methodologies, when combined with channel-specific information-theoretic insights, can potentially beat state-of-the-art codes constructed over decades of mathematical research.

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