This paper proposes a classical weighted least squares type of local polynomial smoothing for the analysis of clustered data, with the key idea of using generalised inverses of correlation matrices. The estimator has a simple closed-form expression. Simplicity is achieved also for nonparametric generalised linear models with arbitrary link function via a transformation. Our approach can be characterised by `local observations with local variances', which yields intuitively correct results in the sense that correct/incorrect specification of within-cluster correlation has respective positive/negative effects. The approach is a natural extension of classical local polynomial smoothing. Consequently, existing theory can be largely carried over...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
This paper proposes a classical weighted least squares type of local polynomial smoothing for the an...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
In this article, a naive empirical likelihood ratio is constructed for a non-parametric regression m...
Data-analytic approaches to regression problems, arising from many scientific disciplines are descri...
We consider rank regression for clustered data analysis and investigate the induced smoothing method...
Abstract: We propose a method for incorporating variable selection into local polynomial regression....
International audienceIn this paper we study a local polynomial estimator of the regression function...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
Multivariate local polynomial fitting is applied to the multivariate linear heteroscedastic regressi...
For longitudinal data analyses, existing statistical methods can be used when the independent and de...
For longitudinal data analyses, existing statistical methods can be used when the independent and de...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
This paper proposes a classical weighted least squares type of local polynomial smoothing for the an...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
In this article, a naive empirical likelihood ratio is constructed for a non-parametric regression m...
Data-analytic approaches to regression problems, arising from many scientific disciplines are descri...
We consider rank regression for clustered data analysis and investigate the induced smoothing method...
Abstract: We propose a method for incorporating variable selection into local polynomial regression....
International audienceIn this paper we study a local polynomial estimator of the regression function...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
Multivariate local polynomial fitting is applied to the multivariate linear heteroscedastic regressi...
For longitudinal data analyses, existing statistical methods can be used when the independent and de...
For longitudinal data analyses, existing statistical methods can be used when the independent and de...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...