Multi-Label Quantification
Alejandro Moreo, Manuel Francisco, Fabrizio Sebastiani

TL;DR
This paper introduces the first multi-label quantification methods that leverage class dependencies to improve prevalence estimation in unlabelled data, outperforming naive independent approaches.
Contribution
It proposes novel multi-label quantification techniques that account for class dependencies, filling a gap in existing binary and single-label quantification methods.
Findings
Multi-label quantification methods outperform naive independent approaches.
Leveraging class dependencies improves prevalence estimation accuracy.
Empirical results demonstrate significant performance gains.
Abstract
Quantification, variously called "supervised prevalence estimation" or "learning to quantify", is the supervised learning task of generating predictors of the relative frequencies (a.k.a. "prevalence values") of the classes of interest in unlabelled data samples. While many quantification methods have been proposed in the past for binary problems and, to a lesser extent, single-label multiclass problems, the multi-label setting (i.e., the scenario in which the classes of interest are not mutually exclusive) remains by and large unexplored. A straightforward solution to the multi-label quantification problem could simply consist of recasting the problem as a set of independent binary quantification problems. Such a solution is simple but na\"ive, since the independence assumption upon which it rests is, in most cases, not satisfied. In these cases, knowing the relative frequency of one…
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Taxonomy
TopicsPneumonia and Respiratory Infections
