impute.learn() now supports training-time storage of
OOD calibration objects through save.ood = TRUE (default),
allowing deployment pipelines to return row-level anomaly summaries in
addition to imputed values.impute.learn() now accepts optional OOD
weight values at fit time. These can be supplied as named
target weights, are stored in the manifest, and are reused automatically
by impute.ood() when score-time weights are not
supplied.score and a
calibrated score.percentile, with optional target-level
details when return.details = TRUE.impute.ood() now supports generalized row aggregation
through aggregate and aggregate.args, allowing
users to experiment with row-level anomaly metrics beyond the default
weighted mean. Initial options include weighted mean, weighted
L_p, weighted L_p after a log-tail transform,
top-k, and a bounded product metric on
1 - u_j.newdata are now tracked
row-wise and are assigned maximal row-level OOD scores so schema and
category anomalies are easy to identify.cache.learners support and richer diagnostics.weight vector is supplied, weights are
matched by target name; omitted targets receive weight 0,
and extra names are ignored.score.percentile remains
available for arbitrary target subsets and test-time weight overrides
rather than being limited to the original training-time weighting
scheme.target.mode = "all",
impute.learn() still fits deployable predictive-imputation
learners so later score-time missingness and OOD scoring can be handled
without retraining.cache.learners normalization in the OOD scoring
path.1.score output even when legacy objects do not
contain enough saved OOD information to rebuild
score.percentile under the new calibration logic.impute.learn help topic to document
impute.ood(), OOD score interpretation, saved weights,
test-time overrides, and unseen-level diagnostics.target.mode = "all", weighted OOD scoring, and alternate
row aggregators.impute.learn() now supports training-time storage of
out-of-distribution (OOD) calibration references through
save.ood = TRUE (default), enabling a new test-time OOD
scoring workflow via impute.ood() /
impute.ood.rfsrc().impute.ood() scores new cases by masked reconstruction
across the learned imputation targets and returns row-level OOD scores,
plus score percentiles when the saved row-level calibration is directly
reusable.impute.ood() usage, arguments, return values, and
examples to the existing impute.learn help topic instead of
creating a separate help page.target.mode = "all" is the recommended
training configuration when OOD scoring is intended for deployment
use.cache.learners argument normalization in the OOD
scoring path.
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