Exploring label correlations using decision templates for ensemble of classifier chains
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces Unconditionally Dependent Decision Templates for Ensemble of Classifier Chains (UDDTECC), a classifier fusion method that leverages correlations between labels during fusion.
- It builds on Decision Templates for Ensemble of Classifier Chains (DTECC), which uses decision profiles for fusion without incorporating label dependency information.
- The method aims to exploit conditionally dependent label information to improve the classification performance of multi-label ensembles.
- Empirical evaluations show that UD DTECC improves performance compared to traditional fusion schemes and a stacking-based strategy on most evaluated metrics.
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