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Random Features Hopfield Networks generalize retrieval to previously unseen examples

Authors :
Kalaj, Silvio
Lauditi, Clarissa
Perugini, Gabriele
Lucibello, Carlo
Malatesta, Enrico M.
Negri, Matteo
Publication Year :
2024

Abstract

It has been recently shown that a learning transition happens when a Hopfield Network stores examples generated as superpositions of random features, where new attractors corresponding to such features appear in the model. In this work we reveal that the network also develops attractors corresponding to previously unseen examples generated with the same set of features. We explain this surprising behaviour in terms of spurious states of the learned features: we argue that, increasing the number of stored examples beyond the learning transition, the model also learns to mix the features to represent both stored and previously unseen examples. We support this claim with the computation of the phase diagram of the model.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.05658
Document Type :
Working Paper