Authors
Bernd Bischl, Michel Lang, Lars Kotthoff, Julia Schiffner, Jakob Richter, Erich Studerus, Giuseppe Casalicchio, Zachary M Jones
Publication date
2016
Journal
Journal of Machine Learning Research
Volume
17
Issue
170
Pages
1-5
Description
The MLR package provides a generic, object-oriented, and extensible framework for classification, regression, survival analysis and clustering for the R language. It provides a unified interface to more than 160 basic learners and includes meta-algorithms and model selection techniques to improve and extend the functionality of basic learners with, e.g., hyperparameter tuning, feature selection, and ensemble construction. Parallel high-performance computing is natively supported. The package targets practitioners who want to quickly apply machine learning algorithms, as well as researchers who want to implement, benchmark, and compare their new methods in a structured environment.
Total citations
201420152016201720182019202020212022202320244517589611814716313111053
Scholar articles
B Bischl, M Lang, L Kotthoff, J Schiffner, J Richter… - Journal of Machine Learning Research, 2016
B Bischl, M Lang, L Kotthoff, J Schiffner, J Richter… - URL https://CRAN. R-project. org/package= mlr. R …
B Bischl, M Lang, J Richter, J Bossek, L Judt, T Kuehn… - R-project. org/package= mlr, 2015