On Worst-Case Optimal Polynomial Intersection
Yihang Sun, Mary Wootters

TL;DR
This paper demonstrates that for the Worst-Case Optimal Polynomial Intersection problem over prime fields, better solutions than the semicircle law exist, surpassing the quantum algorithm DQI's performance in certain regimes.
Contribution
It proves the existence of solutions outperforming the semicircle law for worst-case instances, extending results to MDS codes and connecting to secret sharing resilience.
Findings
Better solutions than semicircle law exist when n/m ≥ 0.6225.
Asymptotically perfect solutions are possible when n/m ≥ 0.7496.
Results apply to Max-LINSAT problems from MDS codes.
Abstract
The Optimal Polynomial Intersection (OPI) problem is the following: Given sets and evaluation points , find a polynomial of degree less than so that for as many as possible. Decoded Quantum Interferometry (DQI) is a quantum algorithm that efficiently returns good solutions to the problem, even on worst-case instances (Jordan et. al., 2025). The quality of the solutions returned follows a semicircle law, which outperforms known efficient classical algorithms. But does DQI obtain the best possible solutions? That is, are there solutions better than the semicircle law for worst-case OPI instances? Surprisingly, before this work, the best existential results coincide with (and follow from) the best algorithmic results. In this work, we show that…
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