Tight Lower Bound for Approximating Parametrized Maximum Likelihood Decoding under ETH
Abstract
We present a simple deterministic reduction which, assuming the Exponential Time Hypothesis (), yields tight lower bounds for approximating the parameterized Maximum Likelihood Decoding problem () and the parameterized Nearest Codeword Problem () within some fixed constant factor. Our starting point is the ETH-based exponential-time hardness of -Gap- established in [BHI+24]. We transform a -Gap- instance into an instance of -Gap - via a novel combinatorial object that we call a cover family. We provide both a randomized construction of the required cover families and a subsequent derandomization. Prior to our work, hardness for constant-factor approximation was only shown under the randomized Gap Exponential Time Hypothesis Gap- [Man20], which is a much stronger assumption than . Under , the strongest known lower bound was due to [BKM25]. Unlike previous approaches that rely on reductions from the hardness of approximating -, our reduction provides a more direct and conceptually simpler route to achieving the optimal lower bounds.
Cite
@article{arxiv.2605.08797,
title = {Tight Lower Bound for Approximating Parametrized Maximum Likelihood Decoding under ETH},
author = {Rishav Gupta and Bingkai Lin and Xin Zheng},
journal= {arXiv preprint arXiv:2605.08797},
year = {2026}
}