A gradient flow formulation for the stochastic Amari neural field model
We study stochastic Amari-type neural field equations, which are mean-field models for neural activity in the cortex. We prove that under certain assumptions on the coupling kernel, the neural field model can be viewed as a gradient flow in a nonlocal Hilbert space. This makes all gradient flow meth...
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Veröffentlicht in: | Journal of mathematical biology 2019-09, Vol.79 (4), p.1227-1252 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | We study stochastic Amari-type neural field equations, which are mean-field models for neural activity in the cortex. We prove that under certain assumptions on the coupling kernel, the neural field model can be viewed as a gradient flow in a nonlocal Hilbert space. This makes all gradient flow methods available for the analysis, which could previously not be used, as it was not known, whether a rigorous gradient flow formulation exists. We show that the equation is well-posed in the nonlocal Hilbert space in the sense that solutions starting in this space also remain in it for all times and space-time regularity results hold for the case of spatially correlated noise. Uniqueness of invariant measures, ergodic properties for the associated Feller semigroups, and several examples of kernels are also discussed. |
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ISSN: | 0303-6812 1432-1416 |
DOI: | 10.1007/s00285-019-01393-w |