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      /\ \         /\ \ /\ \     /\_\      / /\
      \_\ \       /  \ \\ \ \   / / /     / /  \
      /\__ \     / /\ \ \\ \ \_/ / /     / / /\ \__
     / /_ \ \   / / /\ \ \\ \___/ /     / / /\ \___\
    / / /\ \ \ / / /  \ \_\\ \ \_/      \ \ \ \/___/
   / / /  \/_// / /   / / / \ \ \        \ \ \
  / / /      / / /   / / /   \ \ \   _    \ \ \
 / / /      / / /___/ / /     \ \ \ /_/\__/ / /
/_/ /      / / /____\/ /       \ \_\\ \/___/ /
\_\/       \/_________/         \/_/ \_____\/
r-mlr3pipelines 0.7.1
Propagated dependencies: r-backports@1.5.0 r-checkmate@2.3.2 r-data-table@1.16.2 r-digest@0.6.37 r-lgr@0.4.4 r-mlr3@0.21.1 r-mlr3misc@0.15.1 r-paradox@1.0.1 r-r6@2.5.1 r-withr@3.0.2
Channel: guix
Location: gnu/packages/cran.scm (gnu packages cran)
Home page: https://mlr3pipelines.mlr-org.com/
Licenses: LGPL 3
Synopsis: Preprocessing Operators and Pipelines for @code{mlr3}
Description:

mlr3pipelines enriches mlr3 with a diverse set of pipelining operators (PipeOps) that can be composed into graphs. Operations exist for data preprocessing, model fitting, and ensemble learning. Graphs can themselves be treated as mlr3 Learners and can therefore be resampled, benchmarked, and tuned.

r-mlr3resampling 2025.3.30
Propagated dependencies: r-r6@2.5.1 r-paradox@1.0.1 r-mlr3misc@0.15.1 r-mlr3@0.21.1 r-data-table@1.16.2 r-checkmate@2.3.2
Channel: guix-cran
Location: guix-cran/packages/m.scm (guix-cran packages m)
Home page: https://github.com/tdhock/mlr3resampling
Licenses: GPL 3
Synopsis: Resampling Algorithms for 'mlr3' Framework
Description:

This package provides 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 subset (such as geographic region, year, etc), then how do we know if subsets are similar enough so that we can get accurate predictions on one subset, after training on Other subsets? And how do we know if training on All subsets would improve prediction accuracy, relative to training on the Same subset? SOAK, Same/Other/All K-fold cross-validation, <doi:10.48550/arXiv.2410.08643> can be used to answer these question, by fixing a test subset, training models on Same/Other/All subsets, and then comparing test error rates (Same versus Other and Same versus All). Also provides code for estimating how many train samples are required to get accurate predictions on a test set.

r-mlr3superlearner 0.1.2
Propagated dependencies: r-purrr@1.0.2 r-mlr3learners@0.8.0 r-mlr3@0.21.1 r-lgr@0.4.4 r-glmnet@4.1-8 r-data-table@1.16.2 r-cli@3.6.3 r-checkmate@2.3.2
Channel: guix-cran
Location: guix-cran/packages/m.scm (guix-cran packages m)
Home page: https://cran.r-project.org/package=mlr3superlearner
Licenses: GPL 3+
Synopsis: Super Learner Fitting and Prediction
Description:

An implementation of the Super Learner prediction algorithm from van der Laan, Polley, and Hubbard (2007) <doi:10.2202/1544-6115.1309 using the mlr3 framework.

r-mlr3tuningspaces 0.5.1
Propagated dependencies: r-checkmate@2.3.2 r-data-table@1.16.2 r-mlr3@0.21.1 r-mlr3misc@0.15.1 r-mlr3tuning@1.2.0 r-paradox@1.0.1 r-r6@2.5.1
Channel: guix
Location: gnu/packages/cran.scm (gnu packages cran)
Home page: https://mlr3tuningspaces.mlr-org.com
Licenses: LGPL 3
Synopsis: Search spaces for mlr3
Description:

This package is a collection of search spaces for hyperparameter optimization in the mlr3 ecosystem. It features ready-to-use search spaces for many popular machine learning algorithms. The search spaces are from scientific articles and work for a wide range of data sets.

r-mlr3spatiotempcv 2.3.2
Propagated dependencies: r-r6@2.5.1 r-paradox@1.0.1 r-mlr3misc@0.15.1 r-mlr3@0.21.1 r-ggplot2@3.5.1 r-data-table@1.16.2 r-checkmate@2.3.2
Channel: guix-cran
Location: guix-cran/packages/m.scm (guix-cran packages m)
Home page: https://mlr3spatiotempcv.mlr-org.com/
Licenses: LGPL 3
Synopsis: Spatiotemporal Resampling Methods for 'mlr3'
Description:

Extends the mlr3 machine learning framework with spatio-temporal resampling methods to account for the presence of spatiotemporal autocorrelation (STAC) in predictor variables. STAC may cause highly biased performance estimates in cross-validation if ignored. A JSS article is available at <doi:10.18637/jss.v111.i07>.

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