This paper shows how to estimate a model in which an unknown transformation of the dependent variable is a linear function of explanatory variables plus an unobserved random variable, U, whose distribution is unknown. The model nests many familiar parametric and semiparametric models, including models with Box-Cox transformed dependent variables and proportional hazards models with and without unobserved heterogeneity. The paper develops root-n consistent, asymptotically normal estimators of the transformation function, coefficients of the explanatory variables, and distribution of U. The results of Monte Carlo experiments indicate that the estimators work well in samples of size one hundred. Copyright 1996 by The Econometric Society.
We consider a semiparametric transformation model, in which the regression function has an additive ...
We propose a two-step likelihood estimation procedure for the coefficients in a semiparametric trans...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
This paper proposes consistent estimators for transformation parameters in semiparametric models. Th...
Many widely used models, including proportional hazards models with unobserved heterogeneity, can be...
Semiparametric transformation model has been extensively investigated in the literature. The model, ...
The simple linear regression model is the most commonly used model in statistics when we want to exp...
© 2018 Cambridge University Press. We consider a semiparametric transformation model, in which the r...
Semiparametric linear transformation models form a versatile class of regression models with the Cox...
A unified estimation procedure is proposed for the analysis of censored data using linear transforma...
Semiparametric linear transformation models form a versatile class of regression models with the Cox...
We consider a semiparametric transformation model, in which the regression func- tion has an additiv...
One type of semiparametric regression is b8X A u(Z), where b and u(Z) are an unknown slope coefficie...
In this paper we consider the semiparametric transformation model Λθo(Y ) = m(X) + ε, where θo is an...
Consider the following nonparametric transformation model Λ(Y ) = m(X) + ε, where X is a d-dimension...
We consider a semiparametric transformation model, in which the regression function has an additive ...
We propose a two-step likelihood estimation procedure for the coefficients in a semiparametric trans...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
This paper proposes consistent estimators for transformation parameters in semiparametric models. Th...
Many widely used models, including proportional hazards models with unobserved heterogeneity, can be...
Semiparametric transformation model has been extensively investigated in the literature. The model, ...
The simple linear regression model is the most commonly used model in statistics when we want to exp...
© 2018 Cambridge University Press. We consider a semiparametric transformation model, in which the r...
Semiparametric linear transformation models form a versatile class of regression models with the Cox...
A unified estimation procedure is proposed for the analysis of censored data using linear transforma...
Semiparametric linear transformation models form a versatile class of regression models with the Cox...
We consider a semiparametric transformation model, in which the regression func- tion has an additiv...
One type of semiparametric regression is b8X A u(Z), where b and u(Z) are an unknown slope coefficie...
In this paper we consider the semiparametric transformation model Λθo(Y ) = m(X) + ε, where θo is an...
Consider the following nonparametric transformation model Λ(Y ) = m(X) + ε, where X is a d-dimension...
We consider a semiparametric transformation model, in which the regression function has an additive ...
We propose a two-step likelihood estimation procedure for the coefficients in a semiparametric trans...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...