Neural Polar Decoders for DNA Data Storage
Ziv Aharoni, Henry D. Pfister

TL;DR
This paper introduces neural polar decoders (NPDs) for DNA data storage channels with synchronization errors, achieving low complexity, high accuracy, and mutual information estimation without explicit channel models.
Contribution
The work presents a novel neural polar decoder architecture that efficiently handles insertion-deletion channels, with training based on samples and applicability to real DNA storage scenarios.
Findings
NPDs achieve near-optimal performance on deletion channels.
NPDs provide accurate mutual information estimates.
NPDs outperform existing methods with fewer parameters.
Abstract
Synchronization errors, such as insertions and deletions, present a fundamental challenge in DNA-based data storage systems, arising from both synthesis and sequencing noise. These channels are often modeled as insertion-deletion-substitution (IDS) channels, for which designing maximum-likelihood decoders is computationally expensive. In this work, we propose a data-driven approach based on neural polar decoders (NPDs) to design low-complexity decoders for channels with synchronization errors. The proposed architecture enables decoding over IDS channels with reduced complexity , where is a tunable parameter independent of the channel. NPDs require only sample access to the channel and can be trained without an explicit channel model. Additionally, NPDs provide mutual information (MI) estimates that can be used to optimize input distributions and code design. We…
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Taxonomy
TopicsDNA and Biological Computing · Error Correcting Code Techniques · Advanced biosensing and bioanalysis techniques
