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panThis 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 list of imputations for all incomplete variables in the model,
that can be stored in the the imp component of the mids
object.
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.
Stef van Buuren, 2018, building on work of Simon Grund,
Alexander Robitzsch and Oliver Luedtke (authors of mitml package)
and Joe Schafer (author of pan package).
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.
panImpute
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)
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