SimFair: Physics-Guided Fairness-Aware Learning with Simulation Models

Authors

  • Zhihao Wang University of Maryland
  • Yiqun Xie University of Maryland
  • Zhili Li University of Maryland
  • Xiaowei Jia University of Pittsburgh
  • Zhe Jiang University of Florida
  • Aolin Jia University of Maryland
  • Shuo Xu University of Maryland

DOI:

https://doi.org/10.1609/aaai.v38i20.30249

Keywords:

General

Abstract

Fairness-awareness has emerged as an essential building block for the responsible use of artificial intelligence in real applications. In many cases, inequity in performance is due to the change in distribution over different regions. While techniques have been developed to improve the transferability of fairness, a solution to the problem is not always feasible with no samples from the new regions, which is a bottleneck for pure data-driven attempts. Fortunately, physics-based mechanistic models have been studied for many problems with major social impacts. We propose SimFair, a physics-guided fairness-aware learning framework, which bridges the data limitation by integrating physical-rule-based simulation and inverse modeling into the training design. Using temperature prediction as an example, we demonstrate the effectiveness of the proposed SimFair in fairness preservation.

Published

2024-03-24

How to Cite

Wang, Z., Xie, Y., Li, Z., Jia, X., Jiang, Z., Jia, A., & Xu, S. (2024). SimFair: Physics-Guided Fairness-Aware Learning with Simulation Models. Proceedings of the AAAI Conference on Artificial Intelligence, 38(20), 22420-22428. https://doi.org/10.1609/aaai.v38i20.30249