Labelling strategies for hierarchical multi-label classification techniquesTools Triguero, Isaac and Vens, Celine (2016) Labelling strategies for hierarchical multi-label classification techniques. Pattern Recognition, 56 . pp. 170-183. ISSN 0031-3203 Full text not available from this repository.AbstractMany hierarchical multi-label classification systems predict a real valued score for every (instance, class) couple, with a higher score reflecting more confidence that the instance belongs to that class. These classifiers leave the conversion of these scores to an actual label set to the user, who applies a cut-off value to the scores. The predictive performance of these classifiers is usually evaluated using threshold independent measures like precision-recall curves. However, several applications require actual label sets, and thus an automatic labelling strategy.
Actions (Archive Staff Only)
|