Universal codes in the shared-randomness model for channels with general distortion capabilities
Bruno Bauwens, Marius Zimand

TL;DR
This paper introduces new universal channel coding models that are resilient across various channels with different distortion capabilities, sharing randomness between encoder and decoder, and achieving near-optimal rates.
Contribution
The paper develops the first universal codes for channels with general distortion, achieving optimal rates with minimal shared randomness and polynomial-time encoding.
Findings
Universal codes with rate 1 - t/n - o(1) are constructed.
Shared randomness is O(log n) in oblivious scenarios and O(n) in adversarial scenarios.
Encoding is polynomial-time, decoding may not be, for some classes decoding is also polynomial.
Abstract
We put forth new models for universal channel coding. Unlike standard codes which are designed for a specific type of channel, our most general universal code makes communication resilient on every channel, provided the noise level is below the tolerated bound, where the noise level t of a channel is the logarithm of its ambiguity (the maximum number of strings that can be distorted into a given one). The other more restricted universal codes still work for large classes of natural channels. In a universal code, encoding is channel-independent, but the decoding function knows the type of channel. We allow the encoding and the decoding functions to share randomness, which is unavailable to the channel. There are two scenarios for the type of attack that a channel can perform. In the oblivious scenario, codewords belong to an additive group and the channel distorts a codeword by adding a…
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Taxonomy
TopicsWireless Communication Security Techniques · Coding theory and cryptography · DNA and Biological Computing
