Model-Agnostic Meta Learning for Class Imbalance Adaptation

Hanshu Rao, Guangzeng Han, Xiaolei Huang


Abstract
Class imbalance is a widespread challenge in NLP tasks, significantly hindering robust performance across diverse domains and applications. We introduce Hardness-Aware Meta-Resample (HAMR), a unified framework that adaptively addresses both class imbalance and data difficulty. HAMR employs bi-level optimizations to dynamically estimate instance-level weights that prioritize genuinely challenging samples and minority classes, while a neighborhood-aware resampling mechanism amplifies training focus on hard examples and their semantically similar neighbors. We validate HAMR on six imbalanced datasets covering multiple tasks and spanning biomedical, disaster response, and sentiment domains. Experimental results show that HAMR achieves substantial improvements for minority classes and consistently outperforms strong baselines. Extensive ablation studies demonstrate that our proposed modules synergistically contribute to performance gains and highlight HAMR as a flexible and generalizable approach for class imbalance adaptation.
Anthology ID:
2026.findings-acl.507
Volume:
Findings of the Association for Computational Linguistics: ACL 2026
Month:
July
Year:
2026
Address:
San Diego, California, United States
Editors:
Maria Liakata, Viviane P. Moreira, Jiajun Zhang, David Jurgens
Venue:
Findings
SIG:
Publisher:
Association for Computational Linguistics
Note:
Pages:
10442–10456
Language:
URL:
https://preview.aclanthology.org/ingest-acl/2026.findings-acl.507/
DOI:
Bibkey:
Cite (ACL):
Hanshu Rao, Guangzeng Han, and Xiaolei Huang. 2026. Model-Agnostic Meta Learning for Class Imbalance Adaptation. In Findings of the Association for Computational Linguistics: ACL 2026, pages 10442–10456, San Diego, California, United States. Association for Computational Linguistics.
Cite (Informal):
Model-Agnostic Meta Learning for Class Imbalance Adaptation (Rao et al., Findings 2026)
Copy Citation:
PDF:
https://preview.aclanthology.org/ingest-acl/2026.findings-acl.507.pdf
Checklist:
 2026.findings-acl.507.checklist.pdf