Multiple imputation is a commonly used approach to deal with missing values. In this approach, an imputer repeatedly imputes the missing values by taking draws from the posterior predictive distribution for the missing values conditional on the observed values, and releases these completed data sets to analysts. With each completed data set the analyst performs the analysis of interest, treating the data as if it were fully observed. These analyses are then combined with standard combining rules, allowing the analyst to make appropriate inferences which take into account the uncertainty present due to the missing data. In order to preserve the statistical properties present in the data, the imputer must use a plausible distribution to gener...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Conventional multiple imputation (MI) (Rubin, 1987) replaces the missing values in a dataset by m>...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Background. - Statistical analysis of a data set with missing data is a frequent problem to deal wit...
This paper compares methods to remedy missing value problems in survey data. The commonly used meth...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
Rubin (1987) has proposed multiple imputations as a general method for estimation ion the presence o...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
We present an update of mim, a program for managing multiply im- puted datasets and performing infer...
Missing data are an important practical problem in many applications of statistics, including social...
Strategies for making inference in the presence of missing data after conducting a Multiple Imputati...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Conventional multiple imputation (MI) (Rubin, 1987) replaces the missing values in a dataset by m>...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Background. - Statistical analysis of a data set with missing data is a frequent problem to deal wit...
This paper compares methods to remedy missing value problems in survey data. The commonly used meth...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
Rubin (1987) has proposed multiple imputations as a general method for estimation ion the presence o...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
We present an update of mim, a program for managing multiply im- puted datasets and performing infer...
Missing data are an important practical problem in many applications of statistics, including social...
Strategies for making inference in the presence of missing data after conducting a Multiple Imputati...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Conventional multiple imputation (MI) (Rubin, 1987) replaces the missing values in a dataset by m>...
AbstractThe problem of imputing missing observations under the linear regression model is considered...