The modeling procedure of current biological neuron models is hindered by either hyperparameter optimization or overparameterization, which limits their application to a variety of biologically realistic tasks. This article proposes a novel neuron model called the Regularized Spectral Spike Response Model (RSSRM) to address these issues. The selection of hyperparameters is avoided by the model structure and fitting strategy, while the number of parameters is constrained by regularization techniques. Twenty firing simulation experiments indicate the superiority of RSSRM. In particular, after pruning more than 99% of its parameters, RSSRM with 100 parameters achieves an RMSE of 5.632 in membrane potential prediction, a VRD of 47.219, and an F...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
In the auditory system, the stimulus-response properties of single neurons are often described in te...
We report on the construction of neuron models by assimilating electrophysiological data with large-...
Information is transmitted in the brain through various kinds of neurons that respond differently to...
We demonstrate that single-variable integrate-and-fire models can quantitatively capture the dynamic...
UNiversity of Minnesota Ph.D. dissertation. August 2012. Major: Biomedical Engineering. Advisor: The...
This work investigates the capacity of Integrate-and-Fire-type (I&F-type) models to quantitatively p...
A typical human brain consists of roughly 100 billion neurons, and one key aim of Biological Cyberne...
Reduced models of neuronal activity such as Integrate-and-Fire models allow a description of neurona...
The ability of simple mathematical models to predict the activity of single neurons is important for...
This brief is focused on the parameter estimation problem of a second-order adaptive quadratic neuro...
Computational modeling is increasingly used to understand the function of neural circuits in systems...
In this thesis, a weighted least squares approach is initially presented to estimate the parameters ...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
We present a novel framework for automatically constraining parameters of compartmental models of ne...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
In the auditory system, the stimulus-response properties of single neurons are often described in te...
We report on the construction of neuron models by assimilating electrophysiological data with large-...
Information is transmitted in the brain through various kinds of neurons that respond differently to...
We demonstrate that single-variable integrate-and-fire models can quantitatively capture the dynamic...
UNiversity of Minnesota Ph.D. dissertation. August 2012. Major: Biomedical Engineering. Advisor: The...
This work investigates the capacity of Integrate-and-Fire-type (I&F-type) models to quantitatively p...
A typical human brain consists of roughly 100 billion neurons, and one key aim of Biological Cyberne...
Reduced models of neuronal activity such as Integrate-and-Fire models allow a description of neurona...
The ability of simple mathematical models to predict the activity of single neurons is important for...
This brief is focused on the parameter estimation problem of a second-order adaptive quadratic neuro...
Computational modeling is increasingly used to understand the function of neural circuits in systems...
In this thesis, a weighted least squares approach is initially presented to estimate the parameters ...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
We present a novel framework for automatically constraining parameters of compartmental models of ne...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
In the auditory system, the stimulus-response properties of single neurons are often described in te...
We report on the construction of neuron models by assimilating electrophysiological data with large-...