Samplers often distrust model-based approaches to survey inference due to concerns about model misspecification when applied to large samples from complex populations. We suggest that the model-based paradigm can work very successfully in survey settings, provided models are chosen that take into account the sample design and avoid strong parametric assumptions. The Horvitz-Thompson (HT) estimator is a simple design-unbiased estimator of the finite population total in probability sampling designs. From a modeling perspective, the HT estimator performs well when the ratios of the outcome values and the inclusion probabilities are exchangeable. When this assumption is not met, the HT estimator can be very inefficient. In Zheng and Little (200...
In some cases model-based and model-assisted inferences can lead to very different estimators. These...
In this paper, we consider semiparametric regression model where the mean function of this model has...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
For survey samples with unequal probabilities of inclusion, the Horvitz-Thompson (HT) estimator and ...
Inference about the finite population total from probability-proportional-to-size (PPS) samples is c...
Finite population sampling is perhaps the only area of statistics where the primary mode of analysis...
Estimation of finite population total using internal calibration and model assistance on semiparamet...
This dissertation develops new model-based approaches for analysis of sample survey data. The main f...
It is a standard practice in small area estimation (SAE) to use a model-based approach to borrow inf...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
Probability sampling designs are sometimes used in conjunction with model-based predictors of finite...
The efficient use of auxiliary information to improve the precision of estimation of population quan...
Variance estimation for survey estimators that include modeling relies on approximations that ignore...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
Over the past few decades, major advances have taken place in both model-based and model-assisted ap...
In some cases model-based and model-assisted inferences can lead to very different estimators. These...
In this paper, we consider semiparametric regression model where the mean function of this model has...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
For survey samples with unequal probabilities of inclusion, the Horvitz-Thompson (HT) estimator and ...
Inference about the finite population total from probability-proportional-to-size (PPS) samples is c...
Finite population sampling is perhaps the only area of statistics where the primary mode of analysis...
Estimation of finite population total using internal calibration and model assistance on semiparamet...
This dissertation develops new model-based approaches for analysis of sample survey data. The main f...
It is a standard practice in small area estimation (SAE) to use a model-based approach to borrow inf...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
Probability sampling designs are sometimes used in conjunction with model-based predictors of finite...
The efficient use of auxiliary information to improve the precision of estimation of population quan...
Variance estimation for survey estimators that include modeling relies on approximations that ignore...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
Over the past few decades, major advances have taken place in both model-based and model-assisted ap...
In some cases model-based and model-assisted inferences can lead to very different estimators. These...
In this paper, we consider semiparametric regression model where the mean function of this model has...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...