missMDA-package |
Handling missing values with/in multivariate data analysis (principal component methods) |
estim_ncpFAMD |
Estimate the number of dimensions for the Factorial Analysis of Mixed Data by cross-validation |
estim_ncpMCA |
Estimate the number of dimensions for the Multiple Correspondence Analysis by cross-validation |
estim_ncpMultilevel |
Estimate the number of dimensions for the Multilevel PCA, multlevel MCA or Multilevel FAMD by cross-validation |
estim_ncpPCA |
Estimate the number of dimensions for the Principal Component Analysis by cross-validation |
gene |
Gene expression |
geno |
Genotype-environment data set with missing values |
imputeCA |
Impute contingency table |
imputeFAMD |
Impute mixed dataset |
imputeMCA |
Impute categorical dataset |
imputeMFA |
Impute dataset with variables structured into groups of variables (groups of continuous or categorical variables) |
imputeMultilevel |
Impute a multilevel mixed dataset |
imputePCA |
Impute dataset with PCA |
MIFAMD |
Multiple Imputation with FAMD |
MIMCA |
Multiple Imputation with MCA |
MIPCA |
Multiple Imputation with PCA |
missMDA |
Handling missing values with/in multivariate data analysis (principal component methods) |
orange |
Sensory description of 12 orange juices by 8 attributes. |
Overimpute |
Overimputation diagnostic plot |
ozone |
Daily measurements of meteorological variables and ozone concentration |
plot.MIMCA |
Plot the graphs for the Multiple Imputation in MCA |
plot.MIPCA |
Plot the graphs for the Multiple Imputation in PCA |
prelim |
Converts a dataset imputed by MIMCA, MIPCA or MIFAMD into a mids object |
snorena |
Characterization of people who snore |
TitanicNA |
Categorical data set with missing values: Survival of passengers on the Titanic |
vnf |
Questionnaire done by 1232 individuals who answered 14 questions |