2020
DOI: 10.3389/fncel.2020.00161
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Optimization of Efficient Neuron Models With Realistic Firing Dynamics. The Case of the Cerebellar Granule Cell

Abstract: Biologically relevant large-scale computational models currently represent one of the main methods in neuroscience for studying information processing primitives of brain areas. However, biologically realistic neuron models tend to be computationally heavy and thus prevent these models from being part of brain-area models including thousands or even millions of neurons. The cerebellar input layer represents a canonical example of large scale networks. In particular, the cerebellar granule cells, the most numer… Show more

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Cited by 6 publications
(29 citation statements)
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“…This fact has been supported by several comparisons with detailed models and experimental recordings (Brette and Gerstner, 2005;Nair et al, 2014;Naud et al, 2008). As part of their method, Marín et al (2020) tuned the parameters of the AdEx model to fit the neuronal spiking dynamics of real recordings. In this context, the authors model the tuning procedure as an optimization problem and study different objective functions to conduct the optimization.…”
Section: Introductionmentioning
confidence: 93%
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“…This fact has been supported by several comparisons with detailed models and experimental recordings (Brette and Gerstner, 2005;Nair et al, 2014;Naud et al, 2008). As part of their method, Marín et al (2020) tuned the parameters of the AdEx model to fit the neuronal spiking dynamics of real recordings. In this context, the authors model the tuning procedure as an optimization problem and study different objective functions to conduct the optimization.…”
Section: Introductionmentioning
confidence: 93%
“…It is defined in (2) as an abstract function that depends on the ten model parameters included in Table 1. This configuration is that tagged as FF4 in Marín et al (2020), and it is further explained below.…”
Section: Model Structure and Problem Definitionmentioning
confidence: 99%
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