Mastering the Minority: An Uncertainty-guided Multi-Expert Framework for Challenging-tailed Sequence Learning
arXiv cs.LG / 3/18/2026
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Key Points
- The paper introduces the Uncertainty-based Multi-Expert (UME) fusion network to improve minority class detection in imbalanced sequential data.
- UME integrates Ensemble LoRA for parameter-efficient modeling, Sequential Specialization guided by Dempster-Shafer Theory to target challenging-tailed classes, and an uncertainty-guided fusion that weighs expert opinions by DST certainty to resolve conflicts.
- It reports state-of-the-art results on four public hierarchical text classification datasets with up to 17.97% improvement on individual categories and up to 10.32% reduction in trainable parameters.
- The authors provide open-source code at GitHub for reproducibility.
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