Quantum Advantage via Solving Multivariate Polynomials
Abstract
In this work, we propose a new way to (non-interactively, verifiably) demonstrate quantum advantage by solving the average-case search problem of finding a solution to a system of (underdetermined) constant degree multivariate equations over the finite field drawn from a specified distribution. In particular, for any , we design a distribution of degree up to polynomials for over for which we show that there is a expected polynomial-time quantum algorithm that provably simultaneously solves for a random vector . On the other hand, while solutions exist with high probability, we conjecture that for constant , it is classically hard to find one based on a thorough review of existing classical cryptanalysis. Our work thus posits that degree three functions are enough to instantiate the random oracle to obtain non-relativized quantum advantage. Our approach begins with the breakthrough Yamakawa-Zhandry (FOCS 2022) quantum algorithmic framework. In our work, we demonstrate that this quantum algorithmic framework extends to the setting of multivariate polynomial systems. Our key technical contribution is a new analysis on the Fourier spectra of distributions induced by a general family of distributions over multivariate polynomials -- those that satisfy -wise independence and shift-invariance. This family of distributions includes the distribution of uniform random degree at most polynomials for any constant . Our analysis opens up potentially new directions for quantum cryptanalysis of other multivariate systems.
Cite
@article{arxiv.2509.07276,
title = {Quantum Advantage via Solving Multivariate Polynomials},
author = {Pierre Briaud and Itai Dinur and Riddhi Ghosal and Aayush Jain and Paul Lou and Amit Sahai},
journal= {arXiv preprint arXiv:2509.07276},
year = {2025}
}
Comments
49 pages. arXiv admin note: substantial text overlap with arXiv:2411.14697