Statistical mechanics of vector Hopfield network near and above saturation
Artikel i vetenskaplig tidskrift, 2025

We study analytically and numerically a Hopfield fully-connected network with d-dimensional vector spins. These networks are models of associative memory that generalize the standard Hopfield with Ising spins, where P examples are stored in a network of N units as local minima in an energy landscape. We study the equilibrium and out-of-equilibrium properties of the system, considering the system in its retrieval phase alpha<alpha c and beyond, where alpha=P/N is the capacity of the system and alpha c is its critical value, above which storage fails. We derive the Replica Symmetric solution for the equilibrium thermodynamics of the system, together with its phase diagram: we find that the retrieval phase of the network shrinks with growing spin dimension, having ultimately a vanishing critical capacity alpha c proportional to 1/d in the large d limit. As a trade-off, we observe that in the same limit vector Hopfield networks are able to denoise corrupted input patterns in the first step of retrieval dynamics, up to very large capacities alpha proportional to d. We also study the static properties of the system at zero temperature, considering the statistical properties of soft modes of the energy Hessian spectrum. We find that local minima of the energy landscape related to memory states have ungapped spectra with rare soft eigenmodes: these excitations are localized, their measure condensating on the noisiest neurons of the memory state.

artificial neural networks

disordered systems

vector spin glasses

Hopfield networks

Författare

Flavio Nicoletti

Göteborgs universitet

Data Science och AI 3

Francesco D'Amico

CNR - Institute of photonics and of nanotechnologies

Sapienza Università di Roma

Matteo Negri

Sapienza Università di Roma

CNR - Institute of photonics and of nanotechnologies

Journal of Physics A: Mathematical and Theoretical

1751-8113 (ISSN) 1751-8121 (eISSN)

Vol. 58 50 505005

Ämneskategorier (SSIF 2025)

Den kondenserade materiens fysik

Beräkningsmatematik

Matematisk analys

Annan fysik

Subatomär fysik

DOI

10.1088/1751-8121/ae2bd0

Relaterade dataset

vector_hopfield [dataset]

URI: https://github.com/Francill99/vector_hopfield

Mer information

Senast uppdaterat

2026-01-12