Other packages > Find by keyword >

missCompare  

Intuitive Missing Data Imputation Framework
View on CRAN: Click here


Download and install missCompare package within the R console
Install from CRAN:
install.packages("missCompare")

Install from Github:
library("remotes")
install_github("cran/missCompare")

Install by package version:
library("remotes")
install_version("missCompare", "1.0.3")



Attach the package and use:
library("missCompare")
Maintained by
Tibor V. Varga
[Scholar Profile | Author Map]
All associated links for this package
First Published: 2019-02-05
Latest Update: 2020-12-01
Description:
Offers a convenient pipeline to test and compare various missing data imputation algorithms on simulated and real data. These include simpler methods, such as mean and median imputation and random replacement, but also include more sophisticated algorithms already implemented in popular R packages, such as 'mi', described by Su et al. (2011) ; 'mice', described by van Buuren and Groothuis-Oudshoorn (2011) ; 'missForest', described by Stekhoven and Buhlmann (2012) ; 'missMDA', described by Josse and Husson (2016) ; and 'pcaMethods', described by Stacklies et al. (2007) . The central assumption behind 'missCompare' is that structurally different datasets (e.g. larger datasets with a large number of correlated variables vs. smaller datasets with non correlated variables) will benefit differently from different missing data imputation algorithms. 'missCompare' takes measurements of your dataset and sets up a sandbox to try a curated list of standard and sophisticated missing data imputation algorithms and compares them assuming custom missingness patterns. 'missCompare' will also impute your real-life dataset for you after the selection of the best performing algorithm in the simulations. The package also provides various post-imputation diagnostics and visualizations to help you assess imputation performance.
How to cite:
Tibor V. Varga (2019). missCompare: Intuitive Missing Data Imputation Framework. R package version 1.0.3, https://cran.r-project.org/web/packages/missCompare. Accessed 15 Jul. 2026.
Previous versions and publish date:
(2026-07-09 06:30), 1.0.1 (2019-02-05 23:24), 1.0.3 (2020-12-01 09:50)
Other packages that cited missCompare R package
View missCompare citation profile
Other R packages that missCompare depends, imports, suggests or enhances
Complete documentation for missCompare
Downloads during the last 30 days

Today's Hot Picks in Authors and Packages

gscaLCA  
Generalized Structure Component Analysis- Latent Class Analysis & Latent Class Regression
Execute Latent Class Analysis (LCA) and Latent Class Regression (LCR) by using Generalized Structu ...
Download / Learn more Package Citations See dependency  
gamlss.add  
Extra Additive Terms for Generalized Additive Models for Location Scale and Shape
Interface for extra smooth functions including tensor products, neural networks and decision trees. ...
Download / Learn more Package Citations See dependency  
pulseTD  
Identification of Transcriptional Dynamics using Pulse Models via 4su-Seq Data and RNA-Seq Data
A tool for analyzing the transcription, processing and degradation rates of genes by 4sU-seq (the Me ...
Download / Learn more Package Citations See dependency  
SECFISH  
Disaggregate Variable Costs
These functions were developed within SECFISH project (Strengthening regional cooperation in the are ...
Download / Learn more Package Citations See dependency  
PermAlgo  
Permutational Algorithm to Simulate Survival Data
This version of the permutational algorithm generates a dataset in which event and censoring times ...
Download / Learn more Package Citations See dependency  
binhf  
Haar-Fisz Functions for Binomial Data
Binomial Haar-Fisz transforms for Gaussianization as in Nunes and Nason (2009). ...
Download / Learn more Package Citations See dependency  

27,806

R Packages

239,283

Dependencies

73,837

Author Associations

27,807

Publication Badges

© Copyright since 2022. All right reserved, rpkg.net.  Based in Cambridge, Massachusetts, USA