CRAN/E | mice

mice

Multivariate Imputation by Chained Equations

Installation

About

Multiple imputation using Fully Conditional Specification (FCS) implemented by the MICE algorithm as described in Van Buuren and Groothuis-Oudshoorn (2011) doi:10.18637/jss.v045.i03. Each variable has its own imputation model. Built-in imputation models are provided for continuous data (predictive mean matching, normal), binary data (logistic regression), unordered categorical data (polytomous logistic regression) and ordered categorical data (proportional odds). MICE can also impute continuous two-level data (normal model, pan, second-level variables). Passive imputation can be used to maintain consistency between variables. Various diagnostic plots are available to inspect the quality of the imputations.

Citation mice citation info
github.com/amices/mice
amices.org/mice/
stefvanbuuren.name/fimd/
Bug report File report

Key Metrics

Version 3.16.0
R ≥ 2.10.0
Published 2023-06-05 320 days ago
Needs compilation? yes
License GPL-2
License GPL-3
CRAN checks mice results

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Maintainer

Maintainer

Stef van Buuren

stef.vanbuuren@tno.nl

Authors

Stef van Buuren

aut / cre

Karin Groothuis-Oudshoorn

aut

Gerko Vink

ctb

Rianne Schouten

ctb

Alexander Robitzsch

ctb

Patrick Rockenschaub

ctb

Lisa Doove

ctb

Shahab Jolani

ctb

Margarita Moreno-Betancur

ctb

Ian White

ctb

Philipp Gaffert

ctb

Florian Meinfelder

ctb

Bernie Gray

ctb

Vincent Arel-Bundock

ctb

Mingyang Cai

ctb

Thom Volker

ctb

Edoardo Costantini

ctb

Caspar van Lissa

ctb

Hanne Oberman

ctb

Material

README
NEWS
Reference manual
Package source

In Views

MissingData
MixedModels

macOS

r-release

arm64

r-oldrel

arm64

r-release

x86_64

r-oldrel

x86_64

Windows

r-devel

x86_64

r-release

x86_64

r-oldrel

x86_64

Old Sources

mice archive

Depends

R ≥ 2.10.0

Imports

broom
dplyr
generics
glmnet
graphics
grDevices
lattice
methods
mitml
nnet
Rcpp
rpart
rlang
stats
tidyr
utils

Suggests

broom.mixed
future
furrr
haven
knitr
lme4
MASS
miceadds
pan
parallelly
purrr
ranger
randomForest
rmarkdown
rstan
survival
testthat

LinkingTo

cpp11
Rcpp

Reverse Depends

accelmissing
CALIBERrfimpute
HardyWeinberg
ImputeRobust
micd
miceadds
micemd
RfEmpImp
TestDataImputation

Reverse Imports

autoReg
BaM
basecamb
binaryTimeSeries
bootImpute
censcyt
dlookr
dynr
eatRep
finalfit
gFormulaMI
ggmice
hhsmm
hot.deck
howManyImputations
intmed
JWileymisc
konfound
logistf
MatchThem
mi4p
miceafter
mifa
MIIPW
missCompare
missMDA
mixgb
mlim
MRPC
MSiP
NADIA
NIMAA
nncc
OTrecod
pguIMP
psfmi
RBtest
RefBasedMI
rexposome
seqimpute
SLOPE
sociome
StackImpute
superMICE
SynDI
synergyfinder
weights

Reverse Suggests

adjustedCurves
alookr
BGGM
bipd
brms
brokenstick
broom.helpers
bucky
cati
cobalt
FLAME
gerbil
ggeffects
gtsummary
Hmisc
holodeck
HSAUR3
insight
IPWboxplot
lavaan.survey
LMMstar
LSAmitR
manydata
marginaleffects
metavcov
miceFast
microeco
midastouch
misaem
miselect
missDiag
mitml
miWQS
MixtureMissing
MKinfer
modelsummary
monoClust
mvnimpute
ordbetareg
parameters
pema
pre
qgcomp
Qtools
rattle
regmedint
rms
rmsb
semTools
shapeNA
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Reverse Enhances

emmeans
joinet
mdmb