Artículo
Different eigenvalue distributions encode the same temporal tasks in recurrent neural networks
Fecha de publicación:
04/2022
Editorial:
Springer
Revista:
Cognitive Neurodynamics
ISSN:
1871-4080
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Different brain areas, such as the cortex and, more specifically, the prefrontal cortex, show great recurrence in their connections, even in early sensory areas. Several approaches and methods based on trained networks have been proposed to model and describe these regions. It is essential to understand the dynamics behind the models because they are used to build different hypotheses about the functioning of brain areas and to explain experimental results. The main contribution here is the description of the dynamics through the classification and interpretation carried out with a set of numerical simulations. This study sheds light on the multiplicity of solutions obtained for the same tasks and shows the link between the spectra of linearized trained networks and the dynamics of the counterparts. The patterns in the distribution of the eigenvalues of the recurrent weight matrix were studied and properly related to the dynamics in each task.
Palabras clave:
DYNAMICS
,
EIGENVALUE SPECTRUM
,
RECURRENT NEURAL NETWORKS
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Articulos(SEDE CENTRAL)
Articulos de SEDE CENTRAL
Articulos de SEDE CENTRAL
Citación
Jarne, Cecilia Gisele; Different eigenvalue distributions encode the same temporal tasks in recurrent neural networks; Springer; Cognitive Neurodynamics; 17; 1; 4-2022; 257-275
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