The assumption of equal variance in the normal regression model is not always appropriate. Cook and Weisberg (1983) provide a score test to detect heteroscedasticity, while Patterson and Thompson (1971) propose the residual maximum likelihood (REML) estimation to estimate variance components in the context of an unbalanced incomplete-block design. REML is often preferred to the maximum likelihood estimation as a method of estimating covariance parameters in a linear model. However, outliers may have some effect on the estimate of the variance function. This paper incorporates the maximum trimming likelihood estimation ([Hadi and Luceño, 1997] and [Vandev and Neykov, 1998]) in REML to obtain a robust estimation of modelling variance hetero...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
Standard least squares analysis of variance methods suffer from poor power under arbitrarily small d...
In the present work, a weighted maximum likelihood method (WMLM) is proposed to obtain robust estima...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
The purpose of this research is to propose a robust estimate for the parameters of a nonlinear regre...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
We study the effect of heteroscedastic errors on different robust regression methods. Firstly we der...
We discuss in this paper heteroscedastic linear models with symmetrical errors. The symmetrical clas...
The thesis studies redescending M-estimators for the ordinary linear regression model, and maximum l...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This thesis consists of five chapters. Chapter 1 briefly introduces the framework from which this wo...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
Standard least squares analysis of variance methods suffer from poor power under arbitrarily small d...
In the present work, a weighted maximum likelihood method (WMLM) is proposed to obtain robust estima...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
The purpose of this research is to propose a robust estimate for the parameters of a nonlinear regre...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
We study the effect of heteroscedastic errors on different robust regression methods. Firstly we der...
We discuss in this paper heteroscedastic linear models with symmetrical errors. The symmetrical clas...
The thesis studies redescending M-estimators for the ordinary linear regression model, and maximum l...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This thesis consists of five chapters. Chapter 1 briefly introduces the framework from which this wo...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
Standard least squares analysis of variance methods suffer from poor power under arbitrarily small d...
In the present work, a weighted maximum likelihood method (WMLM) is proposed to obtain robust estima...