Parameter estimation in diffusion processes from discrete observations up to a first- passage time is clearly of practical relevance, but does not seem to have been studied so far. In neuroscience, many models for the membrane potential evolution involve the presence of an upper threshold. Data are modelled as discretely observed diffusions which are killed when the threshold is reached. Statistical inference is often based on a misspecified likelihood ignoring the presence of the threshold causing severe bias, e.g. the bias incurred in the drift parameters of the Ornstein– Uhlenbeck model for biological relevant parameters can be up to 25–100 per cent. We compute or approximate the likelihood function of the killed process. When estimating...
A stochastic model for single neuron's activity is constructed as the continuous limit of a birth-an...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
First passage time problems for diffusion processes have been extensively investigated to model neur...
Parameter estimation in diffusion processes from discrete observations up to a first- passage time i...
International audienceDynamics of the membrane potential in a single neuron can be studied estimatin...
A non-homogeneous Ornstein-Uhlembeck (OU) diffusion process is considered as a model for the membran...
We study the estimation of the input parameters in a Feller neuronal model from a trajectory of the ...
Two diffusion processes with multiplicative noise, able to model the changes in the neuronal membran...
First passage time problems for diffusion processes have been extensively investigated to' model neu...
Die vorliegende Arbeit ist motiviert durch biologische Fragestellungen bezüglich des Verhaltens von ...
The maximum likelihood estimation of the unknown parameter of a diffusion process based on an approx...
In one-dimensional systems, the dynamics of a Brownian particle are governed by the force derived fr...
The role of stochastic diffusion processes for modeling purposes is discussed. Special emphasis is p...
A stochastic model for single neuron's activity is constructed as the continuous limit of a birth-an...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
First passage time problems for diffusion processes have been extensively investigated to model neur...
Parameter estimation in diffusion processes from discrete observations up to a first- passage time i...
International audienceDynamics of the membrane potential in a single neuron can be studied estimatin...
A non-homogeneous Ornstein-Uhlembeck (OU) diffusion process is considered as a model for the membran...
We study the estimation of the input parameters in a Feller neuronal model from a trajectory of the ...
Two diffusion processes with multiplicative noise, able to model the changes in the neuronal membran...
First passage time problems for diffusion processes have been extensively investigated to' model neu...
Die vorliegende Arbeit ist motiviert durch biologische Fragestellungen bezüglich des Verhaltens von ...
The maximum likelihood estimation of the unknown parameter of a diffusion process based on an approx...
In one-dimensional systems, the dynamics of a Brownian particle are governed by the force derived fr...
The role of stochastic diffusion processes for modeling purposes is discussed. Special emphasis is p...
A stochastic model for single neuron's activity is constructed as the continuous limit of a birth-an...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
First passage time problems for diffusion processes have been extensively investigated to model neur...