Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted by strongly colored noise the local model will have a bias error. In linear system identification the bias error can be reduced by using instrumentalvariable methods. In this thesis, the problem with bias error in local models have been addressed, by adapting linear methods to local models. Two different two-step estimation methods are presented. Both use the fact that the simulated output of a high-order ARX-model, is an approximation of the noise-free output from the system. The first method is a local version of a twostep ARX technique, where the second step uses an ARX-model with a shorter regressor than in the first step. The second met...
We analyze the properties of various methods for bias-correcting parameter estimates in both station...
This paper discusses the effect of using the biased regression technique Continuum Regression for th...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
The aim of the present study is to derive nonlinear instrument variable methods by using local linea...
Nonparametric and semiparametric regression models are useful statistical regression models to disco...
This paper considers the problem of identifying linear systems, where the input is observed in white...
We suggest an adaptive, error-dependent smoothing method for reducing the variance of local-linear c...
Local linear methods are applied to a nonparametric regression model with normal errors in the varia...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
We explore a class of vector smoothers based on local polynomial regression for fitting nonparametri...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We investigate the finite-sample performance of model selection criteria for local linear regression...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
In this article we study the method of nonparametric regression based on a transformation model, und...
We analyze the properties of various methods for bias-correcting parameter estimates in both station...
This paper discusses the effect of using the biased regression technique Continuum Regression for th...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
Nonlinear systems might be estimated, using local linear models. If the estimation data is corrupted...
The aim of the present study is to derive nonlinear instrument variable methods by using local linea...
Nonparametric and semiparametric regression models are useful statistical regression models to disco...
This paper considers the problem of identifying linear systems, where the input is observed in white...
We suggest an adaptive, error-dependent smoothing method for reducing the variance of local-linear c...
Local linear methods are applied to a nonparametric regression model with normal errors in the varia...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
We explore a class of vector smoothers based on local polynomial regression for fitting nonparametri...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We investigate the finite-sample performance of model selection criteria for local linear regression...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
In this article we study the method of nonparametric regression based on a transformation model, und...
We analyze the properties of various methods for bias-correcting parameter estimates in both station...
This paper discusses the effect of using the biased regression technique Continuum Regression for th...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...