|
This article is cited in 1 scientific paper (total in 1 paper)
Comparing the efficiency of estimates in concrete errors-in-variables models under unknown nuisance parameters
Alexander Kukusha, Andrii Malenkob, Hans Schneeweissc a Department of Mathematical Analysis, Kyiv National Taras
Shevchenko University, Kyiv, Ukraine
b Department of Probability Theory and Mathematical Statistics,
Kyiv National Taras Shevchenko University, Kyiv, Ukraine
c University of Muenchen, Germany
Abstract:
We consider a regression of y on x given by a pair of mean and
variance functions with a parameter vector $\theta$ to be estimated that
also appears in the distribution of the regressor variable $x.$ The estimation of $\theta$ is based on an extended quasi score $(QS)$ function. Of
special interest is the case where the distribution of $x$ depends only
on a subvector $\alpha$ of $\theta,$ which may be considered a nuisance parameter. A major application of this model is the classical measurement
error model, where the corrected score $(CS)$ estimator is an alternative to the $QS$ estimator. Under unknown nuisance parameters
we derive conditions under which the $QS$ estimator is strictly more
efficient than the $CS$ estimator. We focus on the loglinear Poisson,
the Gamma, and the logit model.
Keywords:
Mean-variance model, measurement error model, quasi score
estimator, corrected score estimator, nuisance parameter, optimality property.
Citation:
Alexander Kukush, Andrii Malenko, Hans Schneeweiss, “Comparing the efficiency of estimates in concrete errors-in-variables models under unknown nuisance parameters”, Theory Stoch. Process., 13(29):4 (2007), 69–81
Linking options:
https://www.mathnet.ru/eng/thsp236 https://www.mathnet.ru/eng/thsp/v13/i4/p69
|
Statistics & downloads: |
Abstract page: | 70 | Full-text PDF : | 38 | References: | 20 |
|