This paper proposes a robust estimator for a general class of linear latent variable models (GLLVM) (Moustaki and Knott 2000, Bartholomew and Knott 1999). It is based on a weighted score function that is simple to implement numerically and is made consistent using the basic idea of indirect inference. The need of a robust estimator for these models is motivated by the study of the effect of model deviations such as data contamination on the maximum likelihood estimator (MLE). This is done with the use of the influence function (Hampel 1968, 1974) and the gross error sensitivity (Hampel, Ronchetti, Rousseeuw, and Stahel 1986). Simulation studies show that the MLE can be seriously biased by model deviations. The performance of the robust esti...
In many situations, data follow a generalized partly linear model in which the mean of the responses...
Generalized linear models (McCullagh and Nelder 1989) are a popular technique for modeling a large v...
Generalized Linear Models extends classical regression models to non-normal response variables and a...
In this paper we study bias-corrections to the weighted MLE (Dupuis and Morgenthaler, 2002), a robus...
The paper discusses the effect of model deviations such as data contamination on the maximum likelih...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999) allow ...
Generalized linear latent variable models (GLLVMs), as defined by Bartholomew and Knott, enable mode...
In this paper we propose a family of robust estimators for generalized linear models. The basic idea...
AbstractIn the framework of generalized linear models, the nonrobustness of classical estimators and...
This thesis focuses on the concept of predictive distributions and bias calibration. At first, an ex...
In the framework of generalized linear models, the nonrobustness of classical estimators and tests f...
(Partially based on Chapter 3 of Wagenvoort's EUI PhD thesis, 1998.)The aim of this paper is to demo...
The aim of this paper is to demonstrate how to acquire robust consistent estimates of the linear mod...
This paper considers consistent estimation of generalized linear models with covariate measurement e...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
In many situations, data follow a generalized partly linear model in which the mean of the responses...
Generalized linear models (McCullagh and Nelder 1989) are a popular technique for modeling a large v...
Generalized Linear Models extends classical regression models to non-normal response variables and a...
In this paper we study bias-corrections to the weighted MLE (Dupuis and Morgenthaler, 2002), a robus...
The paper discusses the effect of model deviations such as data contamination on the maximum likelih...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999) allow ...
Generalized linear latent variable models (GLLVMs), as defined by Bartholomew and Knott, enable mode...
In this paper we propose a family of robust estimators for generalized linear models. The basic idea...
AbstractIn the framework of generalized linear models, the nonrobustness of classical estimators and...
This thesis focuses on the concept of predictive distributions and bias calibration. At first, an ex...
In the framework of generalized linear models, the nonrobustness of classical estimators and tests f...
(Partially based on Chapter 3 of Wagenvoort's EUI PhD thesis, 1998.)The aim of this paper is to demo...
The aim of this paper is to demonstrate how to acquire robust consistent estimates of the linear mod...
This paper considers consistent estimation of generalized linear models with covariate measurement e...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
In many situations, data follow a generalized partly linear model in which the mean of the responses...
Generalized linear models (McCullagh and Nelder 1989) are a popular technique for modeling a large v...
Generalized Linear Models extends classical regression models to non-normal response variables and a...