Let r(x,z) be a function that, along with its derivatives, can be consistently estimated nonparametrically. This paper discusses the identification and consistent estimation of the unknown functions H, M, G and F, where r(x,z)=H[M(x,z)], M(x,z)=G(x)+F(z), and H is strictly monotonic. An estimation algorithm is proposed for each of the model’s unknown components when r(x,z) represents a conditional mean function. The resulting estimators use marginal integration to separate the components G and F. Our estimators are shown to have a limiting Normal distribution with a faster rate of convergence than unrestricted nonparametric alternatives. Their small sample performance is studied in a Monte Carlo experiment. We apply our results to estimate ...
This paper shows how to estimate a model in which an unknown transformation of the dependent variabl...
We introduce methods for estimating nonparametric, nonadditive models with simul-taneity. The method...
This paper is concerned with the estimation and inference of nonparametric and semiparamet-ric addit...
Let r(x,z) be a function that, along with its derivatives, can be consistently estimated nonparametr...
[First Draft] Let r (x, z) be a function that can be identified nonparametrically. This paper discus...
For vectors x and w, let r(x;w) be a function that can be nonparametrically estimated consistently a...
The importance of homogeneity as a restriction on functional forms has been well recognized in econo...
This paper is concerned with identification and estimation of non-separable models. It studies a ver...
Abstract Additive regression models have a long history in nonparametric regression It is well kno...
This paper proposes consistent estimators for transformation parameters in semiparametric models. Th...
This paper derives sufficient conditions for nonparametric trans-formation models to be identified a...
LetH0(X) be a function that can be nonparametrically estimated. Suppose E [Y |X] = F0[X⊤β0, H0(X)]....
In econometrics there are many occasions where knowledge of the structural relationship among depend...
Suppose we observe only a dependent variable Y, a mismeasured X (with unobserved true value X∗), and...
This paper describes an estimator of the additive components of a nonparametric additive model with ...
This paper shows how to estimate a model in which an unknown transformation of the dependent variabl...
We introduce methods for estimating nonparametric, nonadditive models with simul-taneity. The method...
This paper is concerned with the estimation and inference of nonparametric and semiparamet-ric addit...
Let r(x,z) be a function that, along with its derivatives, can be consistently estimated nonparametr...
[First Draft] Let r (x, z) be a function that can be identified nonparametrically. This paper discus...
For vectors x and w, let r(x;w) be a function that can be nonparametrically estimated consistently a...
The importance of homogeneity as a restriction on functional forms has been well recognized in econo...
This paper is concerned with identification and estimation of non-separable models. It studies a ver...
Abstract Additive regression models have a long history in nonparametric regression It is well kno...
This paper proposes consistent estimators for transformation parameters in semiparametric models. Th...
This paper derives sufficient conditions for nonparametric trans-formation models to be identified a...
LetH0(X) be a function that can be nonparametrically estimated. Suppose E [Y |X] = F0[X⊤β0, H0(X)]....
In econometrics there are many occasions where knowledge of the structural relationship among depend...
Suppose we observe only a dependent variable Y, a mismeasured X (with unobserved true value X∗), and...
This paper describes an estimator of the additive components of a nonparametric additive model with ...
This paper shows how to estimate a model in which an unknown transformation of the dependent variabl...
We introduce methods for estimating nonparametric, nonadditive models with simul-taneity. The method...
This paper is concerned with the estimation and inference of nonparametric and semiparamet-ric addit...