A contraction argument for two-dimensional spiking neuron models

The field of mathematical neuroscience is concerned with the modeling and interpretation of neuronal dynamics and associated phenomena. Neurons can be modeled individually, in small groups, or collectively as a large network. Mathematical models of single neurons typically involve either different...

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Bibliographic Details
Main Author: Foxall, Eric
Other Authors: Edwards, Roderick
Language:English
en
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/1828/3459
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spelling ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-34592015-01-29T16:51:43Z A contraction argument for two-dimensional spiking neuron models Foxall, Eric Edwards, Roderick Van den Driessche, Pauline Dynamical Systems Mathematical Neuroscience The field of mathematical neuroscience is concerned with the modeling and interpretation of neuronal dynamics and associated phenomena. Neurons can be modeled individually, in small groups, or collectively as a large network. Mathematical models of single neurons typically involve either differential equations, discrete maps, or some combination of both. A number of two-dimensional spiking neuron models that combine continuous dynamics with an instantaneous reset have been introduced in the literature. The models are capable of reproducing a variety of experimentally observed spiking patterns, and also have the advantage of being mathematically tractable. Here an analysis of the transverse stability of orbits in the phase plane leads to sufficient conditions on the model parameters for regular spiking to occur. The application of this method is illustrated by three examples, taken from existing models in the neuroscience literature. In the first two examples the model has no equilibrium states, and regular spiking follows directly. In the third example there are equilibrium points, and some additional quantitative arguments are given to prove that regular spiking occurs. Graduate 2011-08-16T17:53:46Z 2011-08-16T17:53:46Z 2011 2011-08-16 Thesis http://hdl.handle.net/1828/3459 English en Available to the World Wide Web
collection NDLTD
language English
en
sources NDLTD
topic Dynamical Systems
Mathematical Neuroscience
spellingShingle Dynamical Systems
Mathematical Neuroscience
Foxall, Eric
A contraction argument for two-dimensional spiking neuron models
description The field of mathematical neuroscience is concerned with the modeling and interpretation of neuronal dynamics and associated phenomena. Neurons can be modeled individually, in small groups, or collectively as a large network. Mathematical models of single neurons typically involve either differential equations, discrete maps, or some combination of both. A number of two-dimensional spiking neuron models that combine continuous dynamics with an instantaneous reset have been introduced in the literature. The models are capable of reproducing a variety of experimentally observed spiking patterns, and also have the advantage of being mathematically tractable. Here an analysis of the transverse stability of orbits in the phase plane leads to sufficient conditions on the model parameters for regular spiking to occur. The application of this method is illustrated by three examples, taken from existing models in the neuroscience literature. In the first two examples the model has no equilibrium states, and regular spiking follows directly. In the third example there are equilibrium points, and some additional quantitative arguments are given to prove that regular spiking occurs. === Graduate
author2 Edwards, Roderick
author_facet Edwards, Roderick
Foxall, Eric
author Foxall, Eric
author_sort Foxall, Eric
title A contraction argument for two-dimensional spiking neuron models
title_short A contraction argument for two-dimensional spiking neuron models
title_full A contraction argument for two-dimensional spiking neuron models
title_fullStr A contraction argument for two-dimensional spiking neuron models
title_full_unstemmed A contraction argument for two-dimensional spiking neuron models
title_sort contraction argument for two-dimensional spiking neuron models
publishDate 2011
url http://hdl.handle.net/1828/3459
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