articleJournal of Statistical SoftwareJan 1, 2016DIAMOND OA

missMDA : A Package for Handling Missing Values in Multivariate Data Analysis

Laboratoire de Mathématiques · Institut de recherche mathématique de Rennes

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Abstract

We present the R package missMDA which performs principal component methods on incomplete data sets, aiming to obtain scores, loadings and graphical representations despite missing values. Package methods include principal component analysis for continuous variables, multiple correspondence analysis for categorical variables, factorial analysis on mixed data for both continuous and categorical variables, and multiple factor analysis for multi-table data. Furthermore, missMDA can be used to perform single imputation to complete data involving continuous, categorical and mixed variables. A multiple imputation method is also available. In the principal component analysis framework, variability across different…

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Authors

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Topics & keywords

Keywords
  • Categorical variable
  • Missing data
  • Imputation (statistics)
  • Principal component analysis
  • Multivariate statistics
  • Multiple correspondence analysis
  • Statistics
  • Correspondence analysis
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