A B C D E F G H I L M N P Q R S T V W X misc
| ampute | Generate missing data for simulation purposes |
| anova.mira | Compare several nested models |
| appendbreak | Appends specified break to the data |
| as.mids | Converts an imputed dataset (long format) into a 'mids' object |
| as.mira | Create a 'mira' object from repeated analyses |
| as.mitml.result | Converts into a 'mitml.result' object |
| boys | Growth of Dutch boys |
| brandsma | Brandsma school data used Snijders and Bosker (2012) |
| bwplot | Box-and-whisker plot of observed and imputed data |
| bwplot.mads | Box-and-whisker plot of amputed and non-amputed data |
| bwplot.mids | Box-and-whisker plot of observed and imputed data |
| cart | Imputation by classification and regression trees |
| cbind.mids | Combine 'mids' objects by columns |
| cc | Select complete cases |
| cci | Complete case indicator |
| complete | Extracts the completed data from a 'mids' object |
| complete.mids | Extracts the completed data from a 'mids' object |
| construct.blocks | Construct blocks from 'formulas' and 'predictorMatrix' |
| D1 | Compare two nested models using D1-statistic |
| D2 | Compare two nested models using D2-statistic |
| D3 | Compare two nested models using D3-statistic |
| densityplot | Density plot of observed and imputed data |
| densityplot.mids | Density plot of observed and imputed data |
| employee | Employee selection data |
| estimice | Computes least squares parameters |
| extractBS | Extract broken stick estimates from a 'lmer' object |
| fdd | SE Fireworks disaster data |
| fdd.pred | SE Fireworks disaster data |
| fdgs | Fifth Dutch growth study 2009 |
| fico | Fraction of incomplete cases among cases with observed |
| filter.mids | Subset rows of a 'mids' object |
| fix.coef | Fix coefficients and update model |
| flux | Influx and outflux of multivariate missing data patterns |
| fluxplot | Fluxplot of the missing data pattern |
| getfit | Extract list of fitted models |
| getqbar | Extract estimate from 'mipo' object |
| glm.mids | Generalized linear model for 'mids' object |
| hazard | Cumulative hazard rate or Nelson-Aalen estimator |
| ibind | Enlarge number of imputations by combining 'mids' objects |
| ic | Select incomplete cases |
| ici | Incomplete case indicator |
| ici-method | Incomplete case indicator |
| is.mads | Check for 'mads' object |
| is.mids | Check for 'mids' object |
| is.mipo | Check for 'mipo' object |
| is.mira | Check for 'mira' object |
| is.mitml.result | Check for 'mitml.result' object |
| lasso.logreg | Imputation by direct use of lasso logistic regression |
| lasso.norm | Imputation by direct use of lasso linear regression |
| lasso.select.logreg | Imputation by indirect use of lasso logistic regression |
| lasso.select.norm | Imputation by indirect use of lasso linear regression |
| leiden85 | Leiden 85+ study |
| lm.mids | Linear regression for 'mids' object |
| mads-class | Multivariate amputed data set ('mads') |
| make.blocks | Creates a 'blocks' argument |
| make.blots | Creates a 'blots' argument |
| make.formulas | Creates a 'formulas' argument |
| make.method | Creates a 'method' argument |
| make.post | Creates a 'post' argument |
| make.predictorMatrix | Creates a 'predictorMatrix' argument |
| make.visitSequence | Creates a 'visitSequence' argument |
| make.where | Creates a 'where' argument |
| mammalsleep | Mammal sleep data |
| matchindex | Find index of matched donor units |
| md.pairs | Missing data pattern by variable pairs |
| md.pattern | Missing data pattern |
| mdc | Graphical parameter for missing data plots |
| mgg | Self-reported and measured BMI |
| mice | 'mice': Multivariate Imputation by Chained Equations |
| mice.impute.2l.bin | Imputation by a two-level logistic model using 'glmer' |
| mice.impute.2l.lmer | Imputation by a two-level normal model using 'lmer' |
| mice.impute.2l.norm | Imputation by a two-level normal model |
| mice.impute.2l.pan | Imputation by a two-level normal model using 'pan' |
| mice.impute.2lonly.mean | Imputation of most likely value within the class |
| mice.impute.2lonly.norm | Imputation at level 2 by Bayesian linear regression |
| mice.impute.2lonly.pmm | Imputation at level 2 by predictive mean matching |
| mice.impute.cart | Imputation by classification and regression trees |
| mice.impute.jomoImpute | Multivariate multilevel imputation using 'jomo' |
| mice.impute.lasso.logreg | Imputation by direct use of lasso logistic regression |
| mice.impute.lasso.norm | Imputation by direct use of lasso linear regression |
| mice.impute.lasso.select.logreg | Imputation by indirect use of lasso logistic regression |
| mice.impute.lasso.select.norm | Imputation by indirect use of lasso linear regression |
| mice.impute.lda | Imputation by linear discriminant analysis |
| mice.impute.logreg | Imputation by logistic regression |
| mice.impute.logreg.boot | Imputation by logistic regression using the bootstrap |
| mice.impute.mean | Imputation by the mean |
| mice.impute.midastouch | Imputation by predictive mean matching with distance aided donor selection |
| mice.impute.mnar.logreg | Imputation under MNAR mechanism by NARFCS |
| mice.impute.mnar.norm | Imputation under MNAR mechanism by NARFCS |
| mice.impute.norm | Imputation by Bayesian linear regression |
| mice.impute.norm.boot | Imputation by linear regression, bootstrap method |
| mice.impute.norm.nob | Imputation by linear regression without parameter uncertainty |
| mice.impute.norm.predict | Imputation by linear regression through prediction |
| mice.impute.panImpute | Impute multilevel missing data using 'pan' |
| mice.impute.passive | Passive imputation |
| mice.impute.pmm | Imputation by predictive mean matching |
| mice.impute.polr | Imputation of ordered data by polytomous regression |
| mice.impute.polyreg | Imputation of unordered data by polytomous regression |
| mice.impute.quadratic | Imputation of quadratic terms |
| mice.impute.rf | Imputation by random forests |
| mice.impute.ri | Imputation by the random indicator method for nonignorable data |
| mice.impute.sample | Imputation by simple random sampling |
| mice.mids | Multivariate Imputation by Chained Equations (Iteration Step) |
| mice.theme | Set the theme for the plotting Trellis functions |
| mids | Multiply imputed data set ('mids') |
| mids-class | Multiply imputed data set ('mids') |
| mids2mplus | Export 'mids' object to Mplus |
| mids2spss | Export 'mids' object to SPSS |
| mira | Multiply imputed repeated analyses ('mira') |
| mira-class | Multiply imputed repeated analyses ('mira') |
| mnar.logreg | Imputation under MNAR mechanism by NARFCS |
| mnar.norm | Imputation under MNAR mechanism by NARFCS |
| mnar_demo_data | MNAR demo data |
| name.blocks | Name imputation blocks |
| name.formulas | Name formula list elements |
| ncc | Number of complete cases |
| nelsonaalen | Cumulative hazard rate or Nelson-Aalen estimator |
| nhanes | NHANES example - all variables numerical |
| nhanes2 | NHANES example - mixed numerical and discrete variables |
| nic | Number of incomplete cases |
| nimp | Number of imputations per block |
| norm | Imputation by Bayesian linear regression |
| norm.boot | Imputation by linear regression, bootstrap method |
| norm.draw | Draws values of beta and sigma by Bayesian linear regression |
| norm.nob | Imputation by linear regression without parameter uncertainty |
| norm.predict | Imputation by linear regression through prediction |
| parlmice | Wrapper function that runs MICE in parallel |
| pattern | Datasets with various missing data patterns |
| pattern1 | Datasets with various missing data patterns |
| pattern2 | Datasets with various missing data patterns |
| pattern3 | Datasets with various missing data patterns |
| pattern4 | Datasets with various missing data patterns |
| plot.mids | Plot the trace lines of the MICE algorithm |
| pmm | Imputation by predictive mean matching |
| pool | Combine estimates by pooling rules |
| pool.compare | Compare two nested models fitted to imputed data |
| pool.r.squared | Pools R^2 of m models fitted to multiply-imputed data |
| pool.scalar | Multiple imputation pooling: univariate version |
| pool.scalar.syn | Multiple imputation pooling: univariate version |
| pool.syn | Combine estimates by pooling rules |
| popmis | Hox pupil popularity data with missing popularity scores |
| pops | Project on preterm and small for gestational age infants (POPS) |
| pops.pred | Project on preterm and small for gestational age infants (POPS) |
| potthoffroy | Potthoff-Roy data |
| print.mads | Print a 'mads' object |
| print.mice.anova | Print a 'mids' object |
| print.mice.anova.summary | Print a 'mids' object |
| print.mids | Print a 'mids' object |
| print.mira | Print a 'mids' object |
| quadratic | Imputation of quadratic terms |
| quickpred | Quick selection of predictors from the data |
| rbind.mids | Combine 'mids' objects by rows |
| ri | Imputation by the random indicator method for nonignorable data |
| selfreport | Self-reported and measured BMI |
| sleep | Mammal sleep data |
| squeeze | Squeeze the imputed values to be within specified boundaries. |
| stripplot | Stripplot of observed and imputed data |
| stripplot.mids | Stripplot of observed and imputed data |
| summary.mads | Summary of a 'mira' object |
| summary.mice.anova | Summary of a 'mira' object |
| summary.mids | Summary of a 'mira' object |
| summary.mira | Summary of a 'mira' object |
| supports.transparent | Supports semi-transparent foreground colors? |
| tbc | Terneuzen birth cohort |
| tbc.target | Terneuzen birth cohort |
| terneuzen | Terneuzen birth cohort |
| toenail | Toenail data |
| toenail2 | Toenail data |
| transparent | Supports semi-transparent foreground colors? |
| version | Echoes the package version number |
| walking | Walking disability data |
| windspeed | Subset of Irish wind speed data |
| with.mids | Evaluate an expression in multiple imputed datasets |
| xyplot | Scatterplot of observed and imputed data |
| xyplot.mads | Scatterplot of amputed and non-amputed data against weighted sum scores |
| xyplot.mids | Scatterplot of observed and imputed data |
| .norm.draw | Draws values of beta and sigma by Bayesian linear regression |
| .pmm.match | Finds an imputed value from matches in the predictive metric (deprecated) |
| 2l.pan | Imputation by a two-level normal model using 'pan' |
| 2lonly.mean | Imputation of most likely value within the class |
| 2lonly.norm | Imputation at level 2 by Bayesian linear regression |
| 2lonly.pmm | Imputation at level 2 by predictive mean matching |