The first part of the paper examines the asymptotic properties of linear prediction error method estimators, which were recently suggested for the identification of nonlinear stochastic dynamical models. It is shown that their accuracy depends not only on the shape of the unknown distribution of the data, but also on how the model is parameterized. Therefore, it is not obvious in general which linear prediction error method should be preferred. In the second part, the estimating functions approach is introduced and used to construct estimators that are asymptotically optimal with respect to a specific class of estimators. These estimators rely on a partial probabilistic parametric models, and therefore neither require the computations of th...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
Identifcation of dynamic networks has attracted considerable interest recently. So far the main focu...
In this paper, we describe a general variational Bayesian approach for approximate inference on nonl...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Solution of stochastic nonlinear identification problem is proposed. An algorithm of discrete observ...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
With the growing availability of computational resources, the interest in learning models of dynamic...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
When both input and output data are contaminated by non-skewed and~or correlated (perhaps colored) G...
The objective of this paper is to present an identification procedure which is based on the use of a...
In this paper we present a review of some recent results for identification of linear dynamic system...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
Data-driven modeling of stochastic nonlinear systems is recognized as a very challenging problem, ev...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
Identifcation of dynamic networks has attracted considerable interest recently. So far the main focu...
In this paper, we describe a general variational Bayesian approach for approximate inference on nonl...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Solution of stochastic nonlinear identification problem is proposed. An algorithm of discrete observ...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
With the growing availability of computational resources, the interest in learning models of dynamic...
The paper outlines how improved estimates of time variable parameters in models of stochastic dynami...
When both input and output data are contaminated by non-skewed and~or correlated (perhaps colored) G...
The objective of this paper is to present an identification procedure which is based on the use of a...
In this paper we present a review of some recent results for identification of linear dynamic system...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
Data-driven modeling of stochastic nonlinear systems is recognized as a very challenging problem, ev...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
Identifcation of dynamic networks has attracted considerable interest recently. So far the main focu...
In this paper, we describe a general variational Bayesian approach for approximate inference on nonl...