This function is a wrapper around the panImpute
function
from the mitml
package so that it can be called to
impute blocks of variables in mice
. The mitml::panImpute
function provides an interface to the pan
package for
multiple imputation of multilevel data (Schafer & Yucel, 2002).
Imputations can be generated using type
or formula
,
which offer different options for model specification.
mice.impute.panImpute(
data,
formula,
type,
m = 1,
silent = TRUE,
format = "imputes",
...
)
A data frame containing incomplete and auxiliary variables, the cluster indicator variable, and any other variables that should be present in the imputed datasets.
A formula specifying the role of each variable
in the imputation model. The basic model is constructed
by model.matrix
, thus allowing to include derived variables
in the imputation model using I()
. See
panImpute
.
An integer vector specifying the role of each variable
in the imputation model (see panImpute
)
The number of imputed data sets to generate.
(optional) Logical flag indicating if console output should be suppressed. Default is to FALSE
.
A character vector specifying the type of object that should
be returned. The default is format = "list"
. No other formats are
currently supported.
Other named arguments: n.burn
, n.iter
,
group
, prior
, silent
and others.
A list of imputations for all incomplete variables in the model,
that can be stored in the the imp
component of the mids
object.
The number of imputations m
is set to 1, and the function
is called m
times so that it fits within the mice
iteration scheme.
This is a multivariate imputation function using a joint model.
Grund S, Luedtke O, Robitzsch A (2016). Multiple
Imputation of Multilevel Missing Data: An Introduction to the R
Package pan
. SAGE Open.
Schafer JL (1997). Analysis of Incomplete Multivariate Data. London: Chapman & Hall.
Schafer JL, and Yucel RM (2002). Computational strategies for multivariate linear mixed-effects models with missing values. Journal of Computational and Graphical Statistics, 11, 437-457.
Other multivariate-2l:
mice.impute.jomoImpute()
blocks <- list(c("bmi", "chl", "hyp"), "age")
method <- c("panImpute", "pmm")
ini <- mice(nhanes, blocks = blocks, method = method, maxit = 0)
pred <- ini$pred
pred["B1", "hyp"] <- -2
imp <- mice(nhanes, blocks = blocks, method = method, pred = pred, maxit = 1)
#>
#> iter imp variable
#> 1 1 bmi chl hyp
#> 1 2 bmi chl hyp
#> 1 3 bmi chl hyp
#> 1 4 bmi chl hyp
#> 1 5 bmi chl hyp