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Main Authors: Mondal, Priyobrata, Ansari, Faizanuddin, Das, Swagatam
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.13908
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author Mondal, Priyobrata
Ansari, Faizanuddin
Das, Swagatam
author_facet Mondal, Priyobrata
Ansari, Faizanuddin
Das, Swagatam
contents Ensuring fairness in machine learning models is critical, especially when biases compound across intersecting protected attributes like race, gender, and age. While existing methods address fairness for single attributes, they fail to capture the nuanced, multiplicative biases faced by intersectional subgroups. We introduce Adaptive Pareto Front Explorer (APFEx), the first framework to explicitly model intersectional fairness as a joint optimization problem over the Cartesian product of sensitive attributes. APFEx combines three key innovations- (1) an adaptive multi-objective optimizer that dynamically switches between Pareto cone projection, gradient weighting, and exploration strategies to navigate fairness-accuracy trade-offs, (2) differentiable intersectional fairness metrics enabling gradient-based optimization of non-smooth subgroup disparities, and (3) theoretical guarantees of convergence to Pareto-optimal solutions. Experiments on four real-world datasets demonstrate APFEx's superiority, reducing fairness violations while maintaining competitive accuracy. Our work bridges a critical gap in fair ML, providing a scalable, model-agnostic solution for intersectional fairness.
format Preprint
id arxiv_https___arxiv_org_abs_2509_13908
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle APFEx: Adaptive Pareto Front Explorer for Intersectional Fairness
Mondal, Priyobrata
Ansari, Faizanuddin
Das, Swagatam
Machine Learning
Ensuring fairness in machine learning models is critical, especially when biases compound across intersecting protected attributes like race, gender, and age. While existing methods address fairness for single attributes, they fail to capture the nuanced, multiplicative biases faced by intersectional subgroups. We introduce Adaptive Pareto Front Explorer (APFEx), the first framework to explicitly model intersectional fairness as a joint optimization problem over the Cartesian product of sensitive attributes. APFEx combines three key innovations- (1) an adaptive multi-objective optimizer that dynamically switches between Pareto cone projection, gradient weighting, and exploration strategies to navigate fairness-accuracy trade-offs, (2) differentiable intersectional fairness metrics enabling gradient-based optimization of non-smooth subgroup disparities, and (3) theoretical guarantees of convergence to Pareto-optimal solutions. Experiments on four real-world datasets demonstrate APFEx's superiority, reducing fairness violations while maintaining competitive accuracy. Our work bridges a critical gap in fair ML, providing a scalable, model-agnostic solution for intersectional fairness.
title APFEx: Adaptive Pareto Front Explorer for Intersectional Fairness
topic Machine Learning
url https://arxiv.org/abs/2509.13908