Code Rate Optimization via Neural Polar Decoders
Ziv Aharoni, Bashar Huleihel, Henry D Pfister, Haim H Permuter

TL;DR
This paper introduces a neural polar decoder-based method to optimize code rates for unknown channels by estimating mutual information and adapting input distributions, resulting in improved communication performance.
Contribution
It presents a novel two-phase approach combining neural MI estimation and input distribution optimization for polar codes in unknown channel scenarios.
Findings
Significant MI and BER improvements over uniform input distributions.
Effective for channels with non-uniform capacity-achieving distributions.
Applicable to block lengths up to 1024.
Abstract
This paper proposes a method to optimize communication code rates via the application of neural polar decoders (NPDs). Employing this approach enables simultaneous optimization of code rates over input distributions while providing a practical coding scheme within the framework of polar codes. The proposed approach is designed for scenarios where the channel model is unknown, treating the channel as a black box that produces output samples from input samples. We employ polar codes to achieve our objectives, using NPDs to estimate mutual information (MI) between the channel inputs and outputs, and optimize a parametric model of the input distribution. The methodology involves a two-phase process: a training phase and an inference phase. In the training phase, two steps are repeated interchangeably. First, the estimation step estimates the MI of the channel inputs and outputs via NPDs.…
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Taxonomy
TopicsError Correcting Code Techniques · Wireless Signal Modulation Classification · Advanced Wireless Communication Techniques
