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Visual Model Selection using Feature Importance Clusters in Fairness-Performance Similarity Optimized Space

Machine Learning 2025-10-28 v1

Abstract

In the context of algorithmic decision-making, fair machine learning methods often yield multiple models that balance predictive fairness and performance in varying degrees. This diversity introduces a challenge for stakeholders who must select a model that aligns with their specific requirements and values. To address this, we propose an interactive framework that assists in navigating and interpreting the trade-offs across a portfolio of models. Our approach leverages weakly supervised metric learning to learn a Mahalanobis distance that reflects similarity in fairness and performance outcomes, effectively structuring the feature importance space of the models according to stakeholder-relevant criteria. We then apply clustering technique (k-means) to group models based on their transformed representations of feature importances, allowing users to explore clusters of models with similar predictive behaviors and fairness characteristics. This facilitates informed decision-making by helping users understand how models differ not only in their fairness-performance balance but also in the features that drive their predictions.

Keywords

Cite

@article{arxiv.2510.22209,
  title  = {Visual Model Selection using Feature Importance Clusters in Fairness-Performance Similarity Optimized Space},
  author = {Sofoklis Kitharidis and Cor J. Veenman and Thomas Bäck and Niki van Stein},
  journal= {arXiv preprint arXiv:2510.22209},
  year   = {2025}
}
R2 v1 2026-07-01T07:05:24.097Z