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A supervised learning algorithm inputs a train set, and outputs a prediction function, which can be used on a test set. If each data point belongs to a group (such as geographic region, year, etc), then how do we know if it is possible to train on one group, and predict accurately on another group? Cross-validation can be used to determine the extent to which this is possible, by first assigning fold IDs from 1 to K to all data (possibly using stratification, usually by group and label). Then we loop over test sets (group/fold combinations), train sets (same group, other groups, all groups), and compute test/prediction accuracy for each combination. Comparing test/prediction accuracy between same and other, we can determine the extent to which it is possible (perfect if same/other have similar test accuracy for each group; other is usually somewhat less accurate than same; other can be just as bad as featureless baseline when the groups have different patterns). For more information, <https://tdhock.github.io/blog/2023/R-gen-new-subsets/> describes the method in depth. How many train samples are required to get accurate predictions on a test set? Cross-validation can be used to answer this question, with variable size train sets.
Version: | 2024.9.6 |
Imports: | data.table, R6, checkmate, paradox, mlr3, mlr3misc |
Suggests: | ggplot2, animint2, mlr3tuning, lgr, future, testthat, knitr, markdown, nc, rpart, directlabels |
Published: | 2024-09-11 |
DOI: | 10.32614/CRAN.package.mlr3resampling |
Author: | Toby Hocking |
Maintainer: | Toby Hocking <toby.hocking at r-project.org> |
BugReports: | https://github.com/tdhock/mlr3resampling/issues |
License: | GPL-3 |
URL: | https://github.com/tdhock/mlr3resampling |
NeedsCompilation: | no |
Materials: | NEWS |
CRAN checks: | mlr3resampling results |
Reference manual: | mlr3resampling.pdf |
Vignettes: |
Comparing sizes when training on same or other groups (source, R code) Older resamplers (source, R code) |
Package source: | mlr3resampling_2024.9.6.tar.gz |
Windows binaries: | r-devel: mlr3resampling_2024.9.6.zip, r-release: mlr3resampling_2024.9.6.zip, r-oldrel: mlr3resampling_2024.9.6.zip |
macOS binaries: | r-devel (arm64): mlr3resampling_2024.9.6.tgz, r-release (arm64): mlr3resampling_2024.9.6.tgz, r-oldrel (arm64): mlr3resampling_2024.9.6.tgz, r-devel (x86_64): mlr3resampling_2024.9.6.tgz, r-release (x86_64): mlr3resampling_2024.9.6.tgz, r-oldrel (x86_64): mlr3resampling_2024.9.6.tgz |
Old sources: | mlr3resampling archive |
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