This paper is designed to provide an extensive introduction to the principles of multiple imputation and to give some general recommendations of using multiple imputation techniques in the DACSEIS universes. The definition of an ignorable missingness mechanism is explained, and the concept of the observed-data likelihood is discussed. To introduce the multiple imputation principle a short introduction of Bayesian statistics is provided. A small simulation study is performed comparing different approaches to illuminate the advantages and disadvantages of different imputation techniques. Finally, an overview about recently available multiple imputation software is given and violations of the assumptions made are addressed
Background. - Statistical analysis of a data set with missing data is a frequent problem to deal wit...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
A common challenge in developmental research is the amount of incomplete and missing data that occu...
Owing to its practicality as well as strong inferential properties, multiple imputation has been inc...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Missing data is a problem that occurs frequently in many scientific areas. The most sophisticatedmet...
Missing data is a problem that many researchers face, particularly when using large surveys. Informa...
W e propose a remedy for the discrepancy between the way political scientists analyze data with miss...
Multiple imputation and maximum likelihood estimation (via the expectation- maximization algorithm) ...
Abstract Background Multiple i...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
Abstract Background Multiple imputation is frequently...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
Background. - Statistical analysis of a data set with missing data is a frequent problem to deal wit...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
A common challenge in developmental research is the amount of incomplete and missing data that occu...
Owing to its practicality as well as strong inferential properties, multiple imputation has been inc...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Missing data is a problem that occurs frequently in many scientific areas. The most sophisticatedmet...
Missing data is a problem that many researchers face, particularly when using large surveys. Informa...
W e propose a remedy for the discrepancy between the way political scientists analyze data with miss...
Multiple imputation and maximum likelihood estimation (via the expectation- maximization algorithm) ...
Abstract Background Multiple i...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
Abstract Background Multiple imputation is frequently...
Missing data are common wherever statistical methods are applied in practice. They present a problem...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
Abstract Multiple imputation (MI) and full information maximum likelihood (FIML) are the two most co...
Background. - Statistical analysis of a data set with missing data is a frequent problem to deal wit...
A common challenge in developmental research is the amount of incomplete and missing data that occur...
A common challenge in developmental research is the amount of incomplete and missing data that occu...