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Capacity-Resolution Trade-Off in the Optimal Learning of Multiple Low-Dimensional Manifolds by Attractor Neural Networks

  • Center for Atomic-scale Materials Physics (CAMP)

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Résumé

Recurrent neural networks (RNN) are powerful tools to explain how attractors may emerge from noisy, high-dimensional dynamics. We study here how to learn the ∼N2 pairwise interactions in a RNN with N neurons to embed L manifolds of dimension Dâ‰N. We show that the capacity, i.e., the maximal ratio L/N, decreases as |logϵ|-D, where ϵ is the error on the position encoded by the neural activity along each manifold. Hence, RNN are flexible memory devices capable of storing a large number of manifolds at high spatial resolution. Our results rely on a combination of analytical tools from statistical mechanics and random matrix theory, extending Gardner's classical theory of learning to the case of patterns with strong spatial correlations.

langue originaleAnglais
Numéro d'article048302
journalPhysical Review Letters
Volume124
Numéro de publication4
Les DOIs
étatPublié - 29 janv. 2020
Modification externeOui

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