English

Revisiting Pre-processing Group Fairness: A Modular Benchmarking Framework

Machine Learning 2025-08-22 v1

Abstract

As machine learning systems become increasingly integrated into high-stakes decision-making processes, ensuring fairness in algorithmic outcomes has become a critical concern. Methods to mitigate bias typically fall into three categories: pre-processing, in-processing, and post-processing. While significant attention has been devoted to the latter two, pre-processing methods, which operate at the data level and offer advantages such as model-agnosticism and improved privacy compliance, have received comparatively less focus and lack standardised evaluation tools. In this work, we introduce FairPrep, an extensible and modular benchmarking framework designed to evaluate fairness-aware pre-processing techniques on tabular datasets. Built on the AIF360 platform, FairPrep allows seamless integration of datasets, fairness interventions, and predictive models. It features a batch-processing interface that enables efficient experimentation and automatic reporting of fairness and utility metrics. By offering standardised pipelines and supporting reproducible evaluations, FairPrep fills a critical gap in the fairness benchmarking landscape and provides a practical foundation for advancing data-level fairness research.

Keywords

Cite

@article{arxiv.2508.15193,
  title  = {Revisiting Pre-processing Group Fairness: A Modular Benchmarking Framework},
  author = {Brodie Oldfield and Ziqi Xu and Sevvandi Kandanaarachchi},
  journal= {arXiv preprint arXiv:2508.15193},
  year   = {2025}
}

Comments

This paper has been accepted to the 34th ACM International Conference on Information and Knowledge Management (CIKM 2025), Resource Track

R2 v1 2026-07-01T04:59:23.212Z