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mice (version 1.14)

mice.mids: Multivariate Imputation by Chained Equations (Iteration Step)

Description

Takes a "mids"-object, and produces an new object of class "mids".

Usage

mice.mids(obj, maxit=1, diagnostics=TRUE, printFlag=TRUE)

Arguments

obj
An object of class "mids", typically produces by a previous call to mice() or mice.mids()
maxit
The number of additional Gibbs sampling iterations.
diagnostics
A Boolean flag. If TRUE, diagnostic information will be appended to the value of the function. If FALSE, only the imputed data are saved. The default is TRUE.
printFlag
A Boolean flag. If TRUE, diagnostic information during the Gibbs sampling iterations will be written to the command window. The default is TRUE.

Details

This function enables the user to split up the computations of the Gibbs sampler into smaller parts. This is useful for the following reasons: itemize \itemRAM memory may become easily exhausted if the number of iterations is large. Returning to prompt/session level may alleviate these problems. \itemThe user can compute customized convergence statistics at specific points, e.g. after each iteration, for monitoring convergence. - For computing a 'few extra iterations'. itemize Note: The imputation model itself is specified in the mice() function and cannot be changed with mice.mids. The state of the random generator is saved with the mids-object.

References

Van Buuren, S. & Oudshoorn, C.G.M. (2000). Multivariate Imputation by Chained Equations: MICE V1.0 User's manual. Report PG/VGZ/00.038, TNO Prevention and Health, Leiden.

Examples

Run this code
data(nhanes)
imp1 <- mice(nhanes,maxit=1)
imp2 <- mice.mids(imp1)

# yields the same result as
imp <- mice(nhanes,maxit=2)

# for example:
# 
# > imp$imp$bmi[1,]
#      1    2    3    4    5 
# 1 30.1 35.3 33.2 35.3 27.5
# > imp2$imp$bmi[1,]
#      1    2    3    4    5 
# 1 30.1 35.3 33.2 35.3 27.5
#

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