Title of article
Efficient semiparametric estimation for endogenously stratified regression via smoothed likelihood
Author/Authors
Allan G. Cosslett، نويسنده , , Stephen R.، نويسنده ,
Pages
14
From page
116
To page
129
Abstract
This paper presents efficient semiparametric estimators for endogenously stratified regression with two strata, in the case where the error distribution is unknown and the regressors are independent of the error term. The method is based on the use of a kernel-smoothed likelihood function which provides an explicit solution for the maximization problem for the unknown density function without losing information in the asymptotic limit. We consider both standard stratified sampling and variable probability sampling, and allow for the population shares of the strata to be either unknown or known a priori.
Keywords
Semiparametric estimation , Asymptotic efficiency , Endogenously stratified regression
Journal title
Astroparticle Physics
Record number
2041911
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