Data can be lost for different reasons, but sometimes the missingness is a part of the data collection process. Unbiased and efficient estimation of the parameters governing the response mean model requires the missing data to be appropriately addressed. This paper compares and contrasts the Maximum Likelihood and Inverse Probability Weighting estimators in an Outcome-Dependendent Sampling design that deliberately generates incomplete observations. WE demonstrate the comparison through numerical simulations under varied conditions: different coefficient of determination, and whether or not the mean model is misspecified
Missing data are an important practical problem in many applications of statistics, including social...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Modern missing data techniques, such as full information maximum likelihood (FIML) and multiple impu...
This article reviews inverse probability weighting methods and doubly robust estimation methods for ...
Most methods for handling incomplete data can be broadly classified as inverse probability weighting...
Most methods for handling incomplete data can be broadly classified as inverse probability weighting...
The final, definitive version of this paper has been published in Statistical Methods in Medical Res...
incomplete data: Some results on model misspecification Michael McIsaac1 and RJ Cook2 Inverse probab...
This article reviews inverse probability weighting methods and doubly robust estimation methods for...
A Monte Carlo simulation examined the performance of 4 missing data methods in structural equation m...
<p>When analyzing data with missing data, a commonly used method is the inverse probability weightin...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
Missing data is a common occurrence in epidemiologic research. In this paper, 3 data sets with induc...
Complete-case (CC), pairwise available-case (PW), and maximum likelihood (ML) missing data methods w...
In observational studies with two measurements when the measured outcome pertains to a health relate...
Missing data are an important practical problem in many applications of statistics, including social...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Modern missing data techniques, such as full information maximum likelihood (FIML) and multiple impu...
This article reviews inverse probability weighting methods and doubly robust estimation methods for ...
Most methods for handling incomplete data can be broadly classified as inverse probability weighting...
Most methods for handling incomplete data can be broadly classified as inverse probability weighting...
The final, definitive version of this paper has been published in Statistical Methods in Medical Res...
incomplete data: Some results on model misspecification Michael McIsaac1 and RJ Cook2 Inverse probab...
This article reviews inverse probability weighting methods and doubly robust estimation methods for...
A Monte Carlo simulation examined the performance of 4 missing data methods in structural equation m...
<p>When analyzing data with missing data, a commonly used method is the inverse probability weightin...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
Missing data is a common occurrence in epidemiologic research. In this paper, 3 data sets with induc...
Complete-case (CC), pairwise available-case (PW), and maximum likelihood (ML) missing data methods w...
In observational studies with two measurements when the measured outcome pertains to a health relate...
Missing data are an important practical problem in many applications of statistics, including social...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Modern missing data techniques, such as full information maximum likelihood (FIML) and multiple impu...