Inverse Optimality for Fair Digital Twins: A Preference-based approach
Abstract
Digital Twins (DTs) are increasingly used as autonomous decision-makers in complex socio-technical systems. However, their mathematically optimal decisions often diverge from human expectations, revealing a persistent mismatch between algorithmic and bounded human rationality. This work addresses this challenge by proposing a framework that introduces fairness as a learnable objective within optimization-based Digital Twins. In this respect, a preference-driven learning workflow that infers latent fairness objectives directly from human pairwise preferences over feasible decisions is introduced. A dedicated Siamese neural network is developed to generate convex quadratic cost functions conditioned on contextual information. The resulting surrogate objectives drive the optimization procedure toward solutions that better reflect human-perceived fairness while maintaining computational efficiency. The effectiveness of the approach is demonstrated on a COVID-19 hospital resource allocation scenario. Overall, this work offers a practical solution to integrate human-centered fairness into the design of autonomous decision-making systems.
Cite
@article{arxiv.2512.01650,
title = {Inverse Optimality for Fair Digital Twins: A Preference-based approach},
author = {Daniele Masti and Francesco Basciani and Arianna Fedeli and Girgio Gnecco and Francesco Smarra},
journal= {arXiv preprint arXiv:2512.01650},
year = {2025}
}
Comments
Submitted for possible publication at the IFAC World Congress 2026