Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayesian inference are typical approaches for missing data analysis. The focus is on missing covariate data, a common complication in the analysis of sample surveys and clinical trials. A key quantity when applying weighted estimators is the mean score contribution of observations with missing covariate(s), conditional on the observed covariates. This mean score can be estimated parametrically or nonparametrically by its empirical average using the complete case data in case of repeated values of the observed covariates, typically assuming categorical or categorized covariates. A nonparametric kernel based estimator is proposed for this mean score...
We consider nonparametric regression with a mixture of continuous and discrete explanatory variables...
Missing data are very common in many areas such as sociology, biomedical sciences and clinical trial...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
SUMMARY Linear regression is one of the most popular statistical techniques. In linear regression an...
[[abstract]]This article investigates estimation of the regression coefficients in an assumed mean f...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
General procedures are proposed for nonparametric classification in the presence of missing covariat...
AbstractGeneral procedures are proposed for nonparametric classification in the presence of missing ...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
This dissertation includes three papers on missing data problems where methods other than parametric...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
We consider nonparametric regression with a mixture of continuous and discrete explanatory variables...
Missing data are very common in many areas such as sociology, biomedical sciences and clinical trial...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
SUMMARY Linear regression is one of the most popular statistical techniques. In linear regression an...
[[abstract]]This article investigates estimation of the regression coefficients in an assumed mean f...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
General procedures are proposed for nonparametric classification in the presence of missing covariat...
AbstractGeneral procedures are proposed for nonparametric classification in the presence of missing ...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
This dissertation includes three papers on missing data problems where methods other than parametric...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
We consider nonparametric regression with a mixture of continuous and discrete explanatory variables...
Missing data are very common in many areas such as sociology, biomedical sciences and clinical trial...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...