
While some models aim to explain qualitative features of brain activity, other aim to reproduce experimental data quantitatively. If so, model parameters must be adjusted to make the model predictions fit the experimental data. A complication is that in most neurobiological applications, there is not a unique best fit: many parameter combinations give equally good model fits. Recently, the guest, together with colleagues, made the tool AutoMIND to fit spiking network models to data.
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On functional effects of neuronal heterogeneity - with David Dahmen - #41

On smelling your way to the fruit with ring models - with Katherine Nagel - #40

On modeling neural population activity with mean-field models - with Tilo Schwalger - #39

On reproducibility of modeling and 10 years with the Potjans-Diesmann network model - with Hans Ekkehard Plesser - #37
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