mldr. resampling: Efficient Reference Implementations of Multilabel Resampling Algorithms

Date

2023-09-16

Advisors

Journal Title

Journal ISSN

ISSN

Volume Title

Publisher

Elsevier

Type

Article

Peer reviewed

Yes

Abstract

Resampling algorithms are a useful approach to deal with imbalanced learning in multilabel scenarios. These methods have to deal with singularities in the multilabel data, such as the occurrence of frequent and infrequent labels in the same instance. Implementations of these methods are sometimes limited to the pseudocode provided by their authors in a paper. This Original Software Publication presents mldr.resampling, a software package that provides reference implementations for eleven multilabel resampling methods, with an emphasis on efficiency since these algorithms are usually time-consuming.

Description

open access article

Keywords

Citation

Rivera, A.J., Davila, M.A., del Jesus, M.J., Elizondo, D. and Charte, F. (2023) mldr. resampling: Efficient Reference Implementations of Multilabel Resampling Algorithms. Neurocomputing, 559, 126806

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Research Institute