Résumé:
Missing data is a major issue in many applied problems. in our work we examine
data that are missing and . the aims of multiple imputation in comparison to single
imputation, we also studying the statistical inference by likelihood Maximum method
for sample with missing data with Maximization-Expectation algorithm. Finally, we
present the mains packages for imputation of missing data, and we applied the EM
algorithm for Mixture Gaussian model
Keywords: expectation maximization algorithm, missing data, imputation, maximum likelihood Method