Sample selection arises when the outcome of interest is partially observed in a study. Although sophisticated statistical methods in the parametric and non-parametric framework have been proposed to solve this problem, it is yet unclear how to deal with selectively missing covariate data using simple multiple imputation techniques, especially in the absence of exclusion restrictions and deviation from normality. Motivated by the 2003-2004 NHANES data, where previous authors have studied the effect of socio-economic status on blood pressure with missing data on income variable, we proposed the use of a robust imputation technique based on the selection-t sample selection model. The imputation method, which is developed within the frequentist...
Missing data are an important practical problem in many applications of statistics, including social...
Missing not at random (MNAR) data poses key challenges for statistical inference because the model o...
Missing not at random (MNAR) data pose key challenges for statistical inference because the substant...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Missing data is an unavoidable issue when performing data analysis. If the missing probability is re...
International audienceStandard implementations of multiple imputation (MI) approaches provide unbias...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
Missing data is an unavoidable issue in controlled clinical trials and public health research and pr...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
Missing data are exceedingly common across a variety of disciplines, such as educational, social, an...
Abstract Background Multiple imputation is frequently...
This paper considers the problem of parameter estimation in a model for a continuous response variab...
Missing data are an important practical problem in many applications of statistics, including social...
Missing not at random (MNAR) data poses key challenges for statistical inference because the model o...
Missing not at random (MNAR) data pose key challenges for statistical inference because the substant...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Missing data is an unavoidable issue when performing data analysis. If the missing probability is re...
International audienceStandard implementations of multiple imputation (MI) approaches provide unbias...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
Missing data is an unavoidable issue in controlled clinical trials and public health research and pr...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
Missing data are exceedingly common across a variety of disciplines, such as educational, social, an...
Abstract Background Multiple imputation is frequently...
This paper considers the problem of parameter estimation in a model for a continuous response variab...
Missing data are an important practical problem in many applications of statistics, including social...
Missing not at random (MNAR) data poses key challenges for statistical inference because the model o...
Missing not at random (MNAR) data pose key challenges for statistical inference because the substant...