A principal component method to impute missing values for mixed data.

Authors
Publication date
2014
Publication type
Journal Article
Summary We propose a new method to impute missing values in mixed datasets. It is based on a principal components method, the factorial analysis for mixed data, which balances the influence of all the variables that are continuous and categorical in the construction of the dimensions of variability. Because the imputation uses the principal axes and components, the prediction of the missing values are based on the similarity between individuals and on the relationships between variables. The quality of the imputation is assessed through a simulation study and real datasets. The method is compared to a recent method (Stekhoven and Bühlmann, 2011) based on random forests and shows better performances especially for the imputation of categorical variables and when there are highly linear relationships between continuous variables.
Publisher
Springer Science and Business Media LLC
Topics of the publication
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