Labelling strategies for hierarchical multi-label classification techniques

Triguero, Isaac and Vens, Celine (2016) Labelling strategies for hierarchical multi-label classification techniques. Pattern Recognition, 56 . pp. 170-183. ISSN 0031-3203

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Abstract

Many 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.

In this article, we present and evaluate different alternatives to perform the actual labelling in hierarchical multi-label classification. We investigate the selection of both single and multiple thresholds. Despite the existence of multiple threshold selection strategies in non-hierarchical multi-label classification, they can not be applied directly to the hierarchical context. The proposed strategies are implemented within two main approaches: optimisation of a certain performance measure of interest (such as F-measure or hierarchical loss), and simulating training set properties (such as class distribution or label cardinality) in the predictions. We assess the performance of the proposed labelling schemes on 10 datasets from different application domains. Our results show that selecting multiple thresholds may result in an efficient and effective solution for hierarchical multi-label problems.

Item Type: Article
RIS ID: https://nottingham-repository.worktribe.com/output/781467
Keywords: Hierarchical multi-label classification; Threshold optimisation; Hierarchical loss; HMC-loss; F-measure
Schools/Departments: University of Nottingham, UK > Faculty of Science > School of Computer Science
Identification Number: https://doi.org/10.1016/j.patcog.2016.02.017
Depositing User: Triguero, Isaac
Date Deposited: 08 Jun 2016 13:51
Last Modified: 04 May 2020 17:42
URI: https://eprints.nottingham.ac.uk/id/eprint/33847

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