mimar 0.8.0
- Added
superlearner and sl imputers. These
construct a Super Learner-style ensemble by cross-validating candidate
imputers on observed cells, assigning non-negative loss-based weights,
and combining predictions inside the existing chained-imputation
loop.
- Added
library, folds, and
metalearner hyperparameters for
superlearner.
- Updated CRAN preparation files and vignette examples for the new
release.
mimar 0.7
First public release candidate.
- Added
ncore to impute() for
completed-dataset-level parallel imputation through
functionals::fmap().
- Added lightweight iteration traces to
mimar_imputation
diagnostics for convergence screening.
- Added diagnostic plot types for boxplots, bivariate observed/imputed
comparisons, categorical proportions, and trace summaries.
- Updated density diagnostics to draw line-only overlays across
imputations so multiple completed datasets remain visible.
- Refreshed the diagnostic plotting palette to give
mimar
a distinct visual identity while retaining the existing plot
themes.
- Expanded the vignette with KNN-based diagnostic examples, parallel
imputation notes, and interpretation guidance.
mimar 0.0.1
- Initial compact missing-data grammar.
- Added description, amputation, imputation, evaluation, pooling, and
plotting.
- Added chained native and optional learner-backed imputation adapters
without a
funcml dependency.