AI RESEARCH

Mitigating Extrinsic Gender Bias for Bangla Classification Tasks

arXiv CS.AI

ArXi:2411.10636v2 Announce Type: replace-cross In this study, we investigate extrinsic gender bias in Bangla pretrained language models, a largely underexplored area in low-resource languages. To assess this bias, we construct four manually annotated, task-specific benchmark datasets for sentiment analysis, toxicity detection, hate speech detection, and sarcasm detection. Each dataset is augmented using nuanced gender perturbations, where we systematically swap gendered names and terms while preserving semantic content, enabling minimal-pair evaluation of gender-driven prediction shifts.