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MORE–PLR: Multi-Output Regression Employed for Partial Label Ranking

MCML Authors

Abstract

The partial label ranking (PLR) problem is a supervised learning scenario where the learner predicts a ranking with ties of the labels for a given input instance. It generalizes the well-known label ranking (LR) problem, which only allows for strict rankings. So far, pre-vious learning approaches for PLR have primarily adapted LR methods to accommodate ties in predictions. This paper proposes using multi-output regression (MOR) to address the PLR problem by treating ranking positions as multivariate targets, an approach that has received little attention in both LR and PLR. To effectively employ this approach, we introduce several post-hoc layers that convert MOR results into a ranking, potentially including ties. This framework produces a range of learning approaches, which we demonstrate in experimental evaluations to be competitive with the current state-of-the-art PLR methods.

inproceedings


DS 2024

27th International Conference on Discovery Science. Pisa, Italy, Oct 14-16, 2024.

Authors

S. M. A. R. Thies • J. C. Alfaro • V. Bengs

Links

DOI GitHub

Research Area

 A3 | Computational Models

BibTeXKey: TAB24

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