Package: mimar 0.8.0
mimar: Compact Multiple Imputation, Assessment, and Reporting
Provides compact tools for missing-data analysis, including artificial amputation, chained single and multiple imputation, statistical and machine-learning-based imputation methods, diagnostic evaluation, and post-imputation pooling.
Authors:
mimar_0.8.0.tar.gz
mimar_0.8.0.tar.gz(r-4.7-any)mimar_0.8.0.tar.gz(r-4.6-any)
mimar_0.8.0.tgz(r-4.6-emscripten)
manual.pdf |manual.html✨
card.svg |card.png
mimar/json (API)
NEWS
| # Install 'mimar' in R: |
| install.packages('mimar', repos = c('https://cran.r-universe.dev', 'https://cloud.r-project.org')) |
Bug tracker:https://github.com/ielbadisy/mimar/issues
Last updated from:505c4c8101. Checks:4 OK. Indexed: no.
| Target | Result | Time | Files | Syslog |
|---|---|---|---|---|
| linux-devel-x86_64 | OK | 257 | ||
| source / vignettes | OK | 337 | ||
| linux-release-x86_64 | OK | 142 | ||
| wasm-release | OK | 152 |
Exports:amputecompletedescribeevaluatefitimputeimputerimputer_registrypool
Dependencies:abindbackportsBARTbase64encbitbit64bootbroombslibcachemcarcarDataclassclicliprclustercodetoolscolorspacecowplotcpp11crayoncrosstalkdata.tableDerivdigestdoBydoParalleldplyrDTe1071ellipseemmeansestimabilityevaluateFactoMineRfarverfastmapflashClustfontawesomeforcatsforeachforecastFormulafracdifffsfunctionalsgbmgenericsggplot2ggrepelglmnetgluegtablehavenhighrhmshtmltoolshtmlwidgetsisobanditeratorsjomojquerylibjsonliteknitrlabelinglaterlatticelazyevalleapslifecyclelme4lmtestmagrittrMASSMatrixMatrixModelsmemoisemgcvmicemicrobenchmarkmimeminqamissMDAmitmlmodelrmultcompViewmvtnormnaivebayesnlmenloptrnnetnumDerivordinalotelpanpbkrtestpillarpkgconfigprettyunitsprogresspromisesproxypurrrquantregR6rangerrappdirsrbibutilsRColorBrewerRcppRcppArmadilloRcppEigenRdpackreadrreformulasrlangrmarkdownrpartS7sassscalesscatterplot3dshapeSparseMstringistringrsurvivaltibbletidyrtidyselecttimeDatetinytextzdbucminfurcautf8vctrsviridisLitevroomwithrxfunxgboostyamlzoo
Readme and manuals
Help Manual
| Help page | Topics |
|---|---|
| Artificially introduce missing data | ampute ampute.data.frame |
| Extract completed imputed data | complete |
| Describe missing data and mimar objects | describe |
| Evaluate imputation quality | evaluate |
| Fit an imputer learner | fit fit.mimar_imputer |
| Impute missing data | impute impute.data.frame impute.mimar_amputation |
| Build an imputer learner | imputer imputer.default |
| List available mimar imputers | imputer_registry |
| Diagnostic plots for mimar imputations | plot.mimar_imputation |
| Pool post-fit quantities across imputations | pool pool.data.frame pool.list pool.matrix pool.numeric |
