Abstract
Recent studies highlight the effectiveness of using in-context learning (ICL) to steer large language models (LLMs) in processing tabular data, a challenging task given the structured nature of such data. Despite advancements in performance, the fairness implications of these methods are less understood. This study investigates how varying demonstrations within ICL prompts influence the fairness outcomes of LLMs. Our findings reveal that deliberately including minority group samples in prompts significantly boosts fairness without sacrificing predictive accuracy. Further experiments demonstrate that the proportion of minority to majority samples in demonstrations affects the trade-off between fairness and prediction accuracy. Based on these insights, we introduce a mitigation technique that employs clustering and evolutionary strategies to curate a diverse and representative sample set from the training data. This approach aims to enhance both predictive performance and fairness in ICL applications. Experimental results validate that our proposed method dramatically improves fairness across various metrics, showing its efficacy in real-world scenarios.
| Original language | English |
|---|---|
| Title of host publication | Empirical Methods in Natural Language Processing (EMNLP) |
| Subtitle of host publication | Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing |
| Editors | Yaser Al-Onaizan, Mohit Bansal, Yun-Nung Chen |
| Publisher | Association for Computational Linguistics |
| Pages | 7460-7475 |
| Number of pages | 16 |
| ISBN (Electronic) | 9798891761643 |
| Publication status | Published - 9 Nov 2024 |
Keywords
- Zero/few-shot extraction
- Model bias/fairness evaluation
- Model bias mitigation