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Single-positive multi-label learning with label cardinality
Citation Link: https://doi.org/10.15480/882.15957
Publikationstyp
Journal Article
Date Issued
2025-09-08
Sprache
English
TORE-DOI
Volume
2025-September
Citation
Transactions on machine learning research (in Press): (2025)
Scopus ID
Publisher
OpenReview.net
We study learning a multi-label classifier from partially labeled data, where each instance has only a single positive label. We explain how auxiliary information available on the label cardinality, the number of positive labels per instance, can be used for improving such methods. We consider auxiliary information of varying granularity, ranging from knowing just the maximum number of labels over all instances to knowledge on the distribution of label cardinalities and even the exact cardinality of each instance. We introduce methods leveraging the different types of auxiliary information, study how close to the fully labeled accuracy we can get under different scenarios, and show that an easy-to-implement method only assuming the knowledge of the maximum cardinality is comparable to the state-ofthe-art single-positive multi-label learning methods when using the same base model. Our implementation is publicly available at https://github.com/shayangharib/SPMLL_with_Label_Cardinality.
DDC Class
006: Special computer methods
519: Applied Mathematics, Probabilities
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