mvnimpute - Simultaneously Impute the Missing and Censored Values
Implementing a multiple imputation algorithm for
multivariate data with missing and censored values under a
coarsening at random assumption (Heitjan and Rubin,
1991<doi:10.1214/aos/1176348396>). The multiple imputation
algorithm is based on the data augmentation algorithm proposed
by Tanner and Wong (1987)<doi:10.1080/01621459.1987.10478458>.
The Gibbs sampling algorithm is adopted to to update the model
parameters and draw imputations of the coarse data.