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Main Authors: Kristoffersen, Maren Bråthen, Nielsen, Bjørn Fredrik, Solem, Susanne
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.07241
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author Kristoffersen, Maren Bråthen
Nielsen, Bjørn Fredrik
Solem, Susanne
author_facet Kristoffersen, Maren Bråthen
Nielsen, Bjørn Fredrik
Solem, Susanne
contents We propose and analyse a procedure for using a standard activity-based neuron network model and firing data to compute the effective connection strengths between neurons in a network. We assume a Heaviside response function, that the external inputs are given and that the initial state of the neural activity is known. The associated forward operator for this problem, which maps given connection strengths to the time intervals of firing, is highly nonlinear. Nevertheless, it turns out that the inverse problem of determining the connection strengths can be solved in a rather transparent manner, only employing standard mathematical tools. In fact, it is sufficient to solve a system of decoupled ODEs, which yields a linear system of algebraic equations for determining the connection strengths. The nature of the inverse problem is investigated by studying some mathematical properties of the aforementioned linear system and by a series of numerical experiments. Finally, under an assumption preventing the effective contribution of the network to each neuron from staying at zero, we prove that the involved forward operator is continuous. Sufficient criteria on the external input ensuring that the needed assumption holds are also provided.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07241
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Estimating neural connection strengths from firing intervals
Kristoffersen, Maren Bråthen
Nielsen, Bjørn Fredrik
Solem, Susanne
Dynamical Systems
We propose and analyse a procedure for using a standard activity-based neuron network model and firing data to compute the effective connection strengths between neurons in a network. We assume a Heaviside response function, that the external inputs are given and that the initial state of the neural activity is known. The associated forward operator for this problem, which maps given connection strengths to the time intervals of firing, is highly nonlinear. Nevertheless, it turns out that the inverse problem of determining the connection strengths can be solved in a rather transparent manner, only employing standard mathematical tools. In fact, it is sufficient to solve a system of decoupled ODEs, which yields a linear system of algebraic equations for determining the connection strengths. The nature of the inverse problem is investigated by studying some mathematical properties of the aforementioned linear system and by a series of numerical experiments. Finally, under an assumption preventing the effective contribution of the network to each neuron from staying at zero, we prove that the involved forward operator is continuous. Sufficient criteria on the external input ensuring that the needed assumption holds are also provided.
title Estimating neural connection strengths from firing intervals
topic Dynamical Systems
url https://arxiv.org/abs/2409.07241