Multilabel Classification with R Package mlr

作者:Probst Philipp*; Au Quay; Casalicchio Giuseppe; Stachl Clemens; Bischl Bernd
来源:R Journal, 2017, 9(1): 352-369.
DOI:10.32614/rj-2017-012

摘要

We implemented several multilabel classification algorithms in the machine learning package mlr. The implemented methods are binary relevance, classifier chains, nested stacking, dependent binary relevance and stacking, which can be used with any base learner that is accessible in mlr. Moreover, there is access to the multilabel classification versions of randomForestSRC and rFerns. All these methods can be easily compared by different implemented multilabel performance measures and resampling methods in the standardized mlr framework. In a benchmark experiment with several multilabel datasets, the performance of the different methods is evaluated.

  • 出版日期2017-6