Papers by Leonardo Chaves Dutra Da Rocha

1 papers
Instance-Selection-Inspired Undersampling Strategies for Bias Reduction in Small and Large Language Models for Binary Text Classification (2025.acl-long)

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Challenge: Existing methods to mitigate class imbalanced datasets are limited by existing methods.
Approach: They propose two undersampling methods inspired by state-of-the-art Instance Selection techniques to mitigate class imbalance bias in ATC.
Outcome: The proposed methods reduce classifier bias (56%) across all datasets without effectiveness loss while improving efficiency (1.6x speedup), scalability and reducing carbon emissions (up to 50%).

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