Abstract
Abstract
In coding theory, the problem of list recovery asks one to find all codewords c of a given code C which such that at least 1−ρ fraction of the symbols of c lie in some predetermined set of ℓ symbols for each coordinate of the code. A key question is bounding the maximum possible list size L of such codewords for the given code C.
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@article{Brakensiek2026Combinatorial,
title = {Combinatorial Bounds for List Recovery via Discrete Brascamp-Lieb Inequalities},
author = {Joshua Brakensiek and Yeyuan Chen and Manik Dhar and Zihan Zhang},
year = {2026},
doi = {10.1145/3798129.3800756},
url = {https://doi.org/10.1145/3798129.3800756}
}
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