Handling Missing Values with Multivariate Data Analysis


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Documentation for package ‘missMDA’ version 1.19

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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