Bias vs structure of polynomials in large fields, and applications in information theory
Abhishek Bhowmick, Shachar Lovett

TL;DR
This paper extends the understanding of polynomial bias and structure over large finite fields, proving new results that impact coding theory, specifically in Reed-Muller codes, by generalizing prior fixed-field results to growing fields.
Contribution
It generalizes the bias implies low rank result to all prime fields and large characteristic nonprime fields, and applies this to determine list decoding radius and weight distribution of Reed-Muller codes.
Findings
Bias implies low rank over all prime fields.
List decoding radius equals minimum distance for Reed-Muller codes over growing fields.
Resolved the weight distribution problem for Reed-Muller codes.
Abstract
Let be a polynomial of degree in variables over a finite field . The polynomial is said to be unbiased if the distribution of for a uniform input is close to the uniform distribution over , and is called biased otherwise. The polynomial is said to have low rank if it can be expressed as a composition of a few lower degree polynomials. Green and Tao [Contrib. Discrete Math 2009] and Kaufman and Lovett [FOCS 2008] showed that bias implies low rank for fixed degree polynomials over fixed prime fields. This lies at the heart of many tools in higher order Fourier analysis. In this work, we extend this result to all prime fields (of size possibly growing with ). We also provide a generalization to nonprime fields in the large characteristic case. However, we state all our applications in the prime field setting for the sake of…
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Taxonomy
TopicsCoding theory and cryptography · Cooperative Communication and Network Coding · Advanced Wireless Network Optimization
