Published December 12, 2025 | Version v1
Conference paper Open

PROMIS: A Post-Processing Framework for Mitigating Spatial Bias

  • 1. ROR icon Athena Research and Innovation Center In Information Communication & Knowledge Technologies
  • 2. ROR icon Université Libre de Bruxelles
  • 3. ROR icon National and Kapodistrian University of Athens

Description

The rapid integration of machine learning (ML) into critical decisionmaking systems has heightened concerns over fairness, particularly regarding spatial biases often tied to sensitive socioeconomic factors. In response, we propose a model-agnostic post-processing method for spatial bias mitigation that operates without access to the original training data. Our approach formulates an optimization problem that minimizes a fairness measure robust to gerrymandering, subject to a constraint specifying the allowable deviation from the original model's performance ensuring spatial fairness while preserving accuracy. This measure has a 0–1 scale, offering an intuitive way to quantify spatial bias. Comprehensive evaluations on real-world datasets show that our framework effectively reduces spatial bias and achieves fairer outcomes with minimal performance loss, outperforming other state-of-the-art post-processing methods. This work advances spatial fairness methodologies, offering practitioners an efficient, interpretable, and adaptable post-processing solution to mitigate location-based discrimination in ML applications.

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Additional details

Funding

European Commission
AI-DAPT - AI-Ops Framework for Automated, Intelligent and Reliable Data/AI Pipelines Lifecycle with Humans-in-the-Loop and Coupling of Hybrid Science-Guided and AI Models 101135826