In this paper we illustrate the use of alternative truncated regression estimators for the general linear model. These include variations of maximum likelihood, Bayesian, and maximum entropy estimators in which the error distributions are doubly truncated. To evaluate the performance of the estimators (e.g., efficiency) for a range of sample sizes, Monte Carlo sampling experiments are performed. We then apply each estimator to a factor demand equation for wheat-by-class
In statistical experiments, if a random sample of items drawn from a population is tested until all ...
This book introduces readers to statistical methodologies used to analyze doubly truncated data. The...
An alternative to estimation of microeconometric models under the assumption of normality of the dis...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
This article provides a semi parametric method for the estimation of truncated regression models wh...
This paper provides a root-n consistent, asymptotically normal weighted least squares estimator of t...
Truncated sample arise when one do not observe a certain segment of a population. This typically hap...
In various fields of science, such as biology, economics and medicine, scientific data frequently fo...
Problems with truncated data occur in many areas, complicating estimation and inference. Regarding l...
Problems with truncated data occur in many areas, complicating estimation and inference. Regarding l...
In this paper we propose a very flexible estimator in the context of truncated regression that does ...
This paper proposes and explores the use of a partially adaptive estimation technique to improve the...
This paper considers large sample inference for the regression parameter in a partly linear model fo...
This thesis contributes in several ways to the existing knowledge on estimation of truncated, censor...
This paper provides a root-n consistent, asymptotically normal weighted least squares estimator of t...
In statistical experiments, if a random sample of items drawn from a population is tested until all ...
This book introduces readers to statistical methodologies used to analyze doubly truncated data. The...
An alternative to estimation of microeconometric models under the assumption of normality of the dis...
An adaptive estimator is proposed to optimally estimate unknown truncation points of the error suppo...
This article provides a semi parametric method for the estimation of truncated regression models wh...
This paper provides a root-n consistent, asymptotically normal weighted least squares estimator of t...
Truncated sample arise when one do not observe a certain segment of a population. This typically hap...
In various fields of science, such as biology, economics and medicine, scientific data frequently fo...
Problems with truncated data occur in many areas, complicating estimation and inference. Regarding l...
Problems with truncated data occur in many areas, complicating estimation and inference. Regarding l...
In this paper we propose a very flexible estimator in the context of truncated regression that does ...
This paper proposes and explores the use of a partially adaptive estimation technique to improve the...
This paper considers large sample inference for the regression parameter in a partly linear model fo...
This thesis contributes in several ways to the existing knowledge on estimation of truncated, censor...
This paper provides a root-n consistent, asymptotically normal weighted least squares estimator of t...
In statistical experiments, if a random sample of items drawn from a population is tested until all ...
This book introduces readers to statistical methodologies used to analyze doubly truncated data. The...
An alternative to estimation of microeconometric models under the assumption of normality of the dis...