ilmingutest
Ilmingutest is a statistical framework for evaluating the robustness of imputation methods in datasets with missing values. It aims to quantify how the choice of imputation model influences downstream analyses and to produce a composite score, the Ilmingutest score, that captures stability, accuracy, and distributional fidelity of imputed data.
Method: The procedure selects a missingness mechanism and several imputation models. For each model, multiple imputations
Applications: It is used in methodological research to benchmark imputation methods and in teaching to illustrate
Limitations: The score depends on the chosen imputations, downstream tasks, and evaluation metrics; it may be
See also: multiple imputation, missing data, data imputation, model validation, data quality metrics.
Further reading: standard texts on multiple imputation and data quality provide background on the concepts underlying