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 originale | Anglais |
|---|---|
| Numéro d'article | 048302 |
| journal | Physical Review Letters |
| Volume | 124 |
| Numéro de publication | 4 |
| Les DOIs | |
| état | Publié - 29 janv. 2020 |
| Modification externe | Oui |
Empreinte digitale
Examiner les sujets de recherche de « Capacity-Resolution Trade-Off in the Optimal Learning of Multiple Low-Dimensional Manifolds by Attractor Neural Networks ». Ensemble, ils forment une empreinte digitale unique.Contient cette citation
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver