mlr3tuning
Hyperparameter Optimization for 'mlr3'
Hyperparameter optimization package of the 'mlr3' ecosystem. It features highly configurable search spaces via the 'paradox' package and finds optimal hyperparameter configurations for any 'mlr3' learner. 'mlr3tuning' works with several optimization algorithms e.g. Random Search, Iterated Racing, Bayesian Optimization (in 'mlr3mbo') and Hyperband (in 'mlr3hyperband'). Moreover, it can automatically optimize learners and estimate the performance of optimized models with nested resampling.
- Version1.2.1
- R versionunknown
- LicenseLGPL-3
- Needs compilation?No
- Last release11/26/2024
Documentation
Team
Marc Becker
MaintainerShow author detailsMichel Lang
Jakob Richter
Bernd Bischl
Daniel Schalk
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- Depends2 packages
- Imports6 packages
- Suggests13 packages
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