A new approach to nonlinear modeling is presented which, by incorporating the global behavior of the model, lifts shortcomings of both least squares and total least squares parameter estimates. Although ubiquitous in practice, a least squares approach is fundamentally flawed in that it assumes independent, normally distributed (IND) forecast errors: nonlinear models will not yield IND errors even if the noise is IND. A new cost function is obtained via the maximum likelihood principle; superior results are illustrated both for small data sets and infinitely long data streams
Estimation of signals with nonlinear as well as linear parameters in noise is studied. Maximum likel...
The theoretical and computational challenges in least squares estimationof parameters in nonlinea...
A Wiener model consists of a linear dynamic system followed by a static nonlinearity. The input and ...
A new approach to nonlinear modeling is presented which, by incorporating the global behavior of the...
It is known that the least-squares class of algorithms produce unbiased estimates providing certain ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
Maximum likelihood estimation of single-input/single-output linear timeinvariant (LTI) dynamic model...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The nonlinear methods of Least Squares and Maximum Likelihood estimation are the main methods in the...
This paper is concerned with the parameter estimation of a relatively general class of nonlinear dyn...
We study nonlinear least-squares problem that can be transformed to linear problem by change of vari...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
The Wiener model is a block oriented model, having a linear dynamic system followed by a static nonl...
Estimation of signals with nonlinear as well as linear parameters in noise is studied. Maximum likel...
The theoretical and computational challenges in least squares estimationof parameters in nonlinea...
A Wiener model consists of a linear dynamic system followed by a static nonlinearity. The input and ...
A new approach to nonlinear modeling is presented which, by incorporating the global behavior of the...
It is known that the least-squares class of algorithms produce unbiased estimates providing certain ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
Maximum likelihood estimation of single-input/single-output linear timeinvariant (LTI) dynamic model...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The nonlinear methods of Least Squares and Maximum Likelihood estimation are the main methods in the...
This paper is concerned with the parameter estimation of a relatively general class of nonlinear dyn...
We study nonlinear least-squares problem that can be transformed to linear problem by change of vari...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
The Wiener model is a block oriented model, having a linear dynamic system followed by a static nonl...
Estimation of signals with nonlinear as well as linear parameters in noise is studied. Maximum likel...
The theoretical and computational challenges in least squares estimationof parameters in nonlinea...
A Wiener model consists of a linear dynamic system followed by a static nonlinearity. The input and ...