On Aggregation in Ensembles of Multilabel Classifiers

Vu-Linh Nguyen, Eyke Hüllermeier, Michael Rapp, Eneldo Loza Mencía, Johannes Fürnkranz

Research output: Chapter in Book/Report/Conference proceedingConference proceedingspeer-review

Abstract

While a variety of ensemble methods for multilabel classification have been proposed in the literature, the question of how to aggregate the predictions of the individual members of the ensemble has received little attention so far. In this paper, we introduce a formal framework of ensemble multilabel classification, in which we distinguish two principal approaches: predict then combine (PTC), where the ensemble members first make loss minimizing predictions which are subsequently combined, and combine then predict (CTP), which first aggregates information such as marginal label probabilities from the individual ensemble members, and then derives a prediction from this aggregation. While both approaches generalize voting techniques commonly used for multilabel ensembles, they allow to explicitly take the target performance measure into account. Therefore, concrete instantiations of CTP and PTC can be tailored to concrete loss functions. Experimentally, we show that standard voting techniques are indeed outperformed by suitable instantiations of CTP and PTC, and provide some evidence that CTP performs well for decomposable loss functions, whereas PTC is the better choice for non-decomposable losses.
Original languageEnglish
Title of host publicationProceedings of the 23rd International Conference on Discovery Science
PublisherSpringer Nature
Number of pages15
DOIs
Publication statusPublished - 2020

Fields of science

  • 102019 Machine learning

JKU Focus areas

  • Digital Transformation

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