Paper 2026/1143
Collision Resistance of Single-Layer Neural Nets
Abstract
We initiate the study of the algorithmic complexity of finding collisions in single-layer binary neural networks. Given a random matrix $\mathbf{A} \in \mathbb{R}^{m\times n}$, an input $\mathbf{x} \in \{-1,1\}^n$ is mapped to a binary output vector $\varphi(\mathbf{A}\mathbf{x})\in \{-1,1\}^m$, where $\varphi$ is an activation function with constant behavior on $[\kappa, \infty)$ for some threshold $\kappa \geq 0$. We identify the threshold scale $\kappa=\Theta(1/\sqrt{\alpha})$, where $\alpha=m/n$, as separating two complementary phenomena. When $\kappa \ll 1/\sqrt{\alpha}$, we give a simple online algorithm that efficiently produces extensive collisions. When $\kappa \gg 1/\sqrt{\alpha}$, for a natural randomized non-periodic activation and suitable oscillation complexity, we prove that the extensive-collision space exhibits an overlap gap property (OGP), yielding an exponential lower bound against online algorithms. Ours is the first work to use the overlap gap property as a rigorous criterion for collision resistance. The key difference between collision finding and average-case search is that collision finding has a new 'worst-case' aspect: the collision finder has full control over the choice of colliding pairs. Our lower bound is proved in the online model; extending such guarantees to broader classes of algorithms, including spectral, algebraic, lattice-based, or quantum methods, remains an open direction.
Metadata
- Available format(s)
-
PDF
- Category
- Foundations
- Publication info
- Preprint.
- Keywords
- statistical physicsoverlap gap propertyonline algorithmscollision resistance
- Contact author(s)
-
marco benedetti4 @ unibocconi it
abogdano @ uottawa ca
enrico malatesta @ unibocconi it
marc mezard @ unibocconi it
gianmarco perrupato @ unibocconi it
alon rosen @ unibocconi it
nikolaj ignatieff @ gmail com
riccardo zecchina @ unibocconi it - History
- 2026-06-08: approved
- 2026-06-02: received
- See all versions
- Short URL
- https://ia.cr/2026/1143
- License
-
CC BY
BibTeX
@misc{cryptoeprint:2026/1143,
author = {Marco Benedetti and Andrej Bogdanov and Enrico M. Malatesta and Marc Mézard and Gianmarco Perrupato and Alon Rosen and Nikolaj I. Schwartzbach and Riccardo Zecchina},
title = {Collision Resistance of Single-Layer Neural Nets},
howpublished = {Cryptology {ePrint} Archive, Paper 2026/1143},
year = {2026},
url = {https://eprint.iacr.org/2026/1143}
}