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  4. On the stability and dynamics of stochastic spiking neuron models: Nonlinear Hawkes process and point process GLMs
 
research article

On the stability and dynamics of stochastic spiking neuron models: Nonlinear Hawkes process and point process GLMs

Gerhard, Felipe
•
Deger, Moritz  
•
Truccolo, Wilson
2017
Plos Computational Biology

Point process generalized linear models (PP-GLMs) provide an important statistical framework for modeling spiking activity in single-neurons and neuronal networks. Stochastic stability is essential when sampling from these models, as done in computational neuroscience to analyze statistical properties of neuronal dynamics and in neuro-engineering to implement closed-loop applications. Here we show, however, that despite passing common goodness-of-fit tests, PP-GLMs estimated from data are often unstable, leading to divergent firing rates. The inclusion of absolute refractory periods is not a satisfactory solution since the activity then typically settles into unphysiological rates. To address these issues, we derive a framework for determining the existence and stability of fixed points of the expected conditional intensity function (CIF) for general PP-GLMs. Specifically, in nonlinear Hawkes PP-GLMs, the CIF is expressed as a function of the previous spike history and exogenous inputs. We use a mean-field quasi-renewal (QR) approximation that decomposes spike history effects into the contribution of the last spike and an average of the CIF over all spike histories prior to the last spike. Fixed points for stationary rates are derived as self-consistent solutions of integral equations. Bifurcation analysis and the number of fixed points predict that the original models can show stable, divergent, and metastable (fragile) dynamics. For fragile models, fluctuations of the single-neuron dynamics predict expected divergence times after which rates approach unphysiologically high values. This metric can be used to estimate the probability of rates to remain physiological for given time periods, e.g., for simulation purposes. We demonstrate the use of the stability framework using simulated single-neuron examples and neurophysiological recordings. Finally, we show how to adapt PPGLM estimation procedures to guarantee model stability. Overall, our results provide a stability framework for data-driven PP-GLMs and shed new light on the stochastic dynamics of state-of-the-art statistical models of neuronal spiking activity.

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Type
research article
DOI
10.1371/journal.pcbi.1005390
Web of Science ID

WOS:000396398700015

Author(s)
Gerhard, Felipe
Deger, Moritz  
Truccolo, Wilson
Date Issued

2017

Publisher

Public Library of Science

Published in
Plos Computational Biology
Volume

13

Issue

2

Article Number

e1005390

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LCN  
Available on Infoscience
March 27, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/135918
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