Nonlinear stochastic parametric models are widely used in various fields. However, for these models, the problem of maximum likelihood identification is very challenging due to the intractability of the likelihood function. Recently, several methods have been developed to approximate the analytically intractable likelihood function and compute either the maximum likelihood or a Bayesian estimator. These methods, albeit asymptotically optimal, are computationally expensive. In this contribution, we present a simulation-based pseudo likelihood estimator for nonlinear stochastic models. It relies only on the first two moments of the model, which are easy to approximate using Monte-Carlo simulations on the model. The resulting estimator is cons...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
We study the class of state-space models and perform maximum likelihood estimation for the model par...
State-space models are a very general class of time series capable of modeling dependent observation...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose an estimator for parameters of nonlinear mixed effects model, obtained by maximization of...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
We study the class of state-space models and perform maximum likelihood estimation for the model par...
State-space models are a very general class of time series capable of modeling dependent observation...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...