20 pagesInternational audienceWe propose a multiple imputation method to deal with incomplete continuous data based on principal component analysis (PCA). To reflect the uncertainty of the parameters from one imputation to the next, we use a Bayesian treatment of the PCA model. Using a simulation study, the method is compared to two classical approaches: multiple imputation based on joint modeling and on fully conditional modeling. Contrary to the others, the proposed method can be easily used on data sets where the number of individuals is less than the number of variables. In addition, it provides a good point estimate of the parameter of interest, an estimate of the variability of the estimator reliable while reducing the width of the co...
International audienceWe propose a new method to impute missing values in mixed datasets. It is base...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...
International audienceThe available methods to handle missing values in principal component analysis...
This thesis proposes new multiple imputation methods that are based on principal component methods, ...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
We consider the relative performance of two common approaches to multiple imputation (MI): joint MI,...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
The problem of missing data in building multidimensional composite indicators is a delicate problem ...
International audienceWe propose a multiple imputation method to deal with incomplete categorical da...
The straightforward application of Principal Component Analysis (PCA) to incomplete data sets is not...
Multiple imputation (MI) is invented by Rubin in 1970’s. He recommends to create imputations through...
Bayesian multiple imputation (MI) has become a highly useful paradigm for handling missing values in...
Multiple imputation is a recommended method for handling incomplete data problems. One of the barrie...
Imputation for factor analysis 2 Imputation methods are popular for the handling of missing data in ...
International audienceWe propose a new method to impute missing values in mixed datasets. It is base...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...
International audienceThe available methods to handle missing values in principal component analysis...
This thesis proposes new multiple imputation methods that are based on principal component methods, ...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
We consider the relative performance of two common approaches to multiple imputation (MI): joint MI,...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
The problem of missing data in building multidimensional composite indicators is a delicate problem ...
International audienceWe propose a multiple imputation method to deal with incomplete categorical da...
The straightforward application of Principal Component Analysis (PCA) to incomplete data sets is not...
Multiple imputation (MI) is invented by Rubin in 1970’s. He recommends to create imputations through...
Bayesian multiple imputation (MI) has become a highly useful paradigm for handling missing values in...
Multiple imputation is a recommended method for handling incomplete data problems. One of the barrie...
Imputation for factor analysis 2 Imputation methods are popular for the handling of missing data in ...
International audienceWe propose a new method to impute missing values in mixed datasets. It is base...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...
Earlier research has shown that bootstrap confidence intervals from principal component loadings giv...