123
v1v2 (latest)

The Planted Orthogonal Vectors Problem

IACR Cryptology ePrint Archive (IACR ePrint), 2025
Main:17 Pages
Bibliography:3 Pages
Abstract

In the kk-Orthogonal Vectors (kk-OV) problem we are given kk sets, each containing nn binary vectors of dimension d=no(1)d=n^{o(1)}, and our goal is to pick one vector from each set so that at each coordinate at least one vector has a zero. It is a central problem in fine-grained complexity, conjectured to require nko(1)n^{k-o(1)} time in the worst case.We propose a way to \emph{plant} a solution among vectors with i.i.d. pp-biased entries, for appropriately chosen pp, so that the planted solution is the unique one. Our conjecture is that the resulting kk-OV instances still require time nko(1)n^{k-o(1)} to solve, \emph{on average}.Our planted distribution has the property that any subset of strictly less than kk vectors has the \emph{same} marginal distribution as in the model distribution, consisting of i.i.d. pp-biased random vectors. We use this property to give average-case search-to-decision reductions for kk-OV.

View on arXiv
Comments on this paper