Supervised Hebbian learning

Francesco Alemanno, Miriam Aquaro, Ido Kanter, Adriano Barra, Elena Agliari

Research output: Contribution to journalArticlepeer-review

22 Scopus citations

Abstract

In neural network's literature, Hebbian learning traditionally refers to the procedure by which the Hopfield model and its generalizations store archetypes (i.e., definite patterns that are experienced just once to form the synaptic matrix). However, the term learning in machine learning refers to the ability of the machine to extract features from the supplied dataset (e.g., made of blurred examples of these archetypes), in order to make its own representation of the unavailable archetypes. Here, given a sample of examples, we define a supervised learning protocol based on Hebb's rule and by which the Hopfield network can infer the archetypes. By an analytical inspection, we detect the correct control parameters (including size and quality of the dataset) that tune the system performance and we depict its phase diagram. We also prove that, for structureless datasets, the Hopfield model equipped with this supervised learning rule is equivalent to a restricted Boltzmann machine and this suggests an optimal and interpretable training routine. Finally, this approach is generalized to structured datasets: we highlight an ultrametric-like organization (reminiscent of replica-symmetry-breaking) in the analyzed datasets and, consequently, we introduce an additional broken-replica hidden layer for its (partial) disentanglement, which is shown to improve MNIST classification from to , and to offer a new perspective on deep architectures.

Original languageEnglish
Article number11001
JournalEPL
Volume141
Issue number1
DOIs
StatePublished - Jan 2023

Bibliographical note

Publisher Copyright:
Copyright © 2023 EPLA.

Funding

The authors are grateful to MOST (Ministry of Science, Technology and Space in Israel) and MAECI (Ministero degli Affari Esteri e della Cooperazione Internazionale in Italy) for the shared grant “BULBUL” (F85F21006230001). EA acknowledges financial support from Sapienza University of Rome (RM120172B8066CB0). FA acknowledges partial fundings by PON R&I (ARS01-00876).

FundersFunder number
PON R&IARS01-00876
Ministry of Science, Technology and Space
Sapienza Università di RomaRM120172B8066CB0
Ministry of Science and Technology, Taiwan
Ministero degli Affari Esteri e della Cooperazione InternazionaleF85F21006230001

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