The efficient use of auxiliary information to improve the precision of estimation of population quantities of interest is a central problem in survey sampling. We consider nonparametric regression estimation using much weaker assumptions on the superpopulation model in more general survey situations. Complex designs such as multistage and multiphase sampling are often employed in many large-scale surveys. Nonparametric model-assisted estimators, based on local polynomial regression, for two-stage and two-phase sampling designs are proposed. The local polynomial regression estimator is a nonparametric version of the generalized regression (GREG) estimator and shares most of the desirable properties of the generalized regression estimator. Th...
This dissertation describes three distinct research papers. Although each research topic is differe...
Abstract. Nonparametric techniques have only recently been employed in the es-timation procedure of ...
Samplers often distrust model-based approaches to survey inference due to concerns about model missp...
Regression estimators for the finite population mean constructed under superpopulation models are co...
Systematic sampling is a frequently used sampling method in natural resource surveys, because of its...
Survey sampling often supplies information about a study vari-able only for sampled elements. Howeve...
2011 Summer.Includes bibliographical references.In the field of survey statistics, finite population...
: A new class of model-assisted estimators based on local polynomial regression is suggested. The es...
AbstractAn additive model-assisted nonparametric method is investigated to estimate the finite popul...
For survey samples with unequal probabilities of inclusion, the Horvitz-Thompson (HT) estimator and ...
Key Words: auxiliary information, environmental surveys, kernel regression, smoothing A nonparametri...
2014 Spring.In this dissertation, we deal with two different topics in statistics. The first topic i...
The use of auxiliary population information to improve estimation and analysis in sample surveys is ...
Nonparametric regression is the model-based sampler's method of choice when there is serious do...
An estimator of the population distribution function that can be used with the complex sampling desi...
This dissertation describes three distinct research papers. Although each research topic is differe...
Abstract. Nonparametric techniques have only recently been employed in the es-timation procedure of ...
Samplers often distrust model-based approaches to survey inference due to concerns about model missp...
Regression estimators for the finite population mean constructed under superpopulation models are co...
Systematic sampling is a frequently used sampling method in natural resource surveys, because of its...
Survey sampling often supplies information about a study vari-able only for sampled elements. Howeve...
2011 Summer.Includes bibliographical references.In the field of survey statistics, finite population...
: A new class of model-assisted estimators based on local polynomial regression is suggested. The es...
AbstractAn additive model-assisted nonparametric method is investigated to estimate the finite popul...
For survey samples with unequal probabilities of inclusion, the Horvitz-Thompson (HT) estimator and ...
Key Words: auxiliary information, environmental surveys, kernel regression, smoothing A nonparametri...
2014 Spring.In this dissertation, we deal with two different topics in statistics. The first topic i...
The use of auxiliary population information to improve estimation and analysis in sample surveys is ...
Nonparametric regression is the model-based sampler's method of choice when there is serious do...
An estimator of the population distribution function that can be used with the complex sampling desi...
This dissertation describes three distinct research papers. Although each research topic is differe...
Abstract. Nonparametric techniques have only recently been employed in the es-timation procedure of ...
Samplers often distrust model-based approaches to survey inference due to concerns about model missp...