A regression model is considered in which the response variables have gamma distributions with a common shape parameter. A review is given of existing estimators for the shape parameter. Bias expressions for the maximum likelihood estimates of the regression coe f f i c i ent s and the shape parameter are developed. A new estima t o r f o r t h e shape parameter based on bias correction for the maximum likelihood estimator is shown to have markedly better variance and mean square error properties in small to moderate sized samples. Approximations to the low order moments of the Pearson statistic are derived for gamma regression models with general link functions. These are used for the case of a logarithmic link to develop new est...
AbstractAsymptotic expansions of the distributions of the pivotal statistics involving log-likelihoo...
Cook (1977) proposed a diagnostic to quantify the impact of deleting an observation on the estimated...
summary:Unknown parameters of the covariance matrix (variance components) of the observation vector ...
Transformation is a powerful tool for model building. In regression the response variable is transfo...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
AbstractFor the simple linear model Y=θ1+βx+ϵ where the error vector follows the elliptically contou...
A procedure is derived for computing standard errors in random intercept models for estimates obtain...
The class of gamma regression models is based on the assumption that the dependent variable is gamma...
論説Asymptotic expansions of the distributions of thirteen fit indexes used in covariance structure an...
by Chun-Wai Sit.Thesis (M.Phil.)--Chinese University of Hong Kong, 1998.Includes bibliographical ref...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
This thesis is concerned with nonparametric kernel density estimation and regression. In particular,...
AbstractStandard and extended growth curve model (multivariate linear model) with practically import...
The inverse Gaussian regression (IGR) model is a very common model when the shape of the response va...
This dissertation is presented in publication form and consists of two articles. The first article c...
AbstractAsymptotic expansions of the distributions of the pivotal statistics involving log-likelihoo...
Cook (1977) proposed a diagnostic to quantify the impact of deleting an observation on the estimated...
summary:Unknown parameters of the covariance matrix (variance components) of the observation vector ...
Transformation is a powerful tool for model building. In regression the response variable is transfo...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
AbstractFor the simple linear model Y=θ1+βx+ϵ where the error vector follows the elliptically contou...
A procedure is derived for computing standard errors in random intercept models for estimates obtain...
The class of gamma regression models is based on the assumption that the dependent variable is gamma...
論説Asymptotic expansions of the distributions of thirteen fit indexes used in covariance structure an...
by Chun-Wai Sit.Thesis (M.Phil.)--Chinese University of Hong Kong, 1998.Includes bibliographical ref...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
This thesis is concerned with nonparametric kernel density estimation and regression. In particular,...
AbstractStandard and extended growth curve model (multivariate linear model) with practically import...
The inverse Gaussian regression (IGR) model is a very common model when the shape of the response va...
This dissertation is presented in publication form and consists of two articles. The first article c...
AbstractAsymptotic expansions of the distributions of the pivotal statistics involving log-likelihoo...
Cook (1977) proposed a diagnostic to quantify the impact of deleting an observation on the estimated...
summary:Unknown parameters of the covariance matrix (variance components) of the observation vector ...