Morgan André ; Christophe Pouzat - A Quasi-Stationary Approach to Metastability in a System of Spiking Neurons with Synaptic Plasticity

mna:7668 - Mathematical Neuroscience and Applications, January 2, 2025, Volume 4 - https://doi.org/10.46298/mna.7668
A Quasi-Stationary Approach to Metastability in a System of Spiking Neurons with Synaptic PlasticityArticle

Authors: Morgan André 1; Christophe Pouzat ORCID2

After reviewing the behavioral studies of working memory and of the cellular substrate of the latter, we argue that metastable states constitute candidates for the type of transient information storage required by working memory. We then present a simple neural network model made of stochastic units whose synapses exhibit short-term facilitation. The Markov process dynamics of this model was specifically designed to be analytically tractable, simple to simulate numerically and to exhibit a quasi-stationary distribution (QSD). Since the state space is finite this QSD is also a Yaglom limit, which allows us to bridge the gap between quasi-stationarity and metastability by considering the relative orders of magnitude of the relaxation and absorption times. We present first analytical results: characterization of the absorbing region of the Markov process, irreducibility outside this absorbing region and consequently existence and uniqueness of a QSD. We then apply Perron-Frobenius spectral analysis to obtain any specific QSD, and design an approximate method for the first moments of this QSD when the exact method is intractable. Finally we use these methods to study the relaxation time toward the QSD and establish numerically the memorylessness of the time of extinction.


Volume: Volume 4
Section: Applications
Published on: January 2, 2025
Accepted on: November 15, 2024
Submitted on: July 12, 2021
Keywords: Working memory,Synaptic plasiticty,Metastability,Quasi-stationary distribution,Markov processes,Stochastic simulation,Stochastic neural networks,60K35, 37H30, 60J28, 92C20, 92C42,[MATH.MATH-PR]Mathematics [math]/Probability [math.PR],[SDV.NEU]Life Sciences [q-bio]/Neurons and Cognition [q-bio.NC]
Funding:
    Source : HAL
  • Estimation de la structure des réseaux neuronaux par simulations contrainte par des séquences de potentiels d'action observées; Funder: French National Research Agency (ANR); Code: ANR-22-CE45-0027

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