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Autori principali: Betteti, Simone, Bullo, Francesco
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.05666
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author Betteti, Simone
Bullo, Francesco
author_facet Betteti, Simone
Bullo, Francesco
contents We investigate the asymptotic behavior of probability measures associated with stochastic dynamical systems featuring either globally contracting or $B_{r}$-contracting drift terms. While classical results often assume constant diffusion and gradient-based drifts, we extend the analysis to spatially inhomogeneous diffusion and non-integrable vector fields. We establish sufficient conditions for the existence and uniqueness of stationary measures under global contraction, showing that convergence is preserved when the contraction rate dominates diffusion inhomogeneity. For systems contracting only outside of a compact set and with constant diffusion, we demonstrate mass concentration near the minima of an associated non-convex potential, like in multistable regimes. The theoretical findings are illustrated through Hopfield networks, highlighting implications for memory retrieval dynamics in noisy environments.
format Preprint
id arxiv_https___arxiv_org_abs_2504_05666
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Contraction and concentration of measures with applications to theoretical neuroscience
Betteti, Simone
Bullo, Francesco
Dynamical Systems
Mathematical Physics
Analysis of PDEs
35Q84, 60G10
We investigate the asymptotic behavior of probability measures associated with stochastic dynamical systems featuring either globally contracting or $B_{r}$-contracting drift terms. While classical results often assume constant diffusion and gradient-based drifts, we extend the analysis to spatially inhomogeneous diffusion and non-integrable vector fields. We establish sufficient conditions for the existence and uniqueness of stationary measures under global contraction, showing that convergence is preserved when the contraction rate dominates diffusion inhomogeneity. For systems contracting only outside of a compact set and with constant diffusion, we demonstrate mass concentration near the minima of an associated non-convex potential, like in multistable regimes. The theoretical findings are illustrated through Hopfield networks, highlighting implications for memory retrieval dynamics in noisy environments.
title Contraction and concentration of measures with applications to theoretical neuroscience
topic Dynamical Systems
Mathematical Physics
Analysis of PDEs
35Q84, 60G10
url https://arxiv.org/abs/2504.05666