Learning Surrogate Potential Mean Field Games via Gaussian Processes: A Data-Driven Approach to Ill-Posed Inverse Problems
Abstract
Mean field games (MFGs) describe the collective behavior of large populations of interacting agents. In this work, we tackle ill-posed inverse problems in potential MFGs, aiming to recover the agents' population, momentum, and environmental setup from limited, noisy measurements and partial observations. These problems are ill-posed because multiple MFG configurations can explain the same data, or different parameters can yield nearly identical observations. Nonetheless, they remain crucial in practice for real-world scenarios where data are inherently sparse or noisy, or where the MFG structure is not fully determined. Our focus is on finding surrogate MFGs that accurately reproduce the observed data despite these challenges. We propose two Gaussian process (GP)-based frameworks: an inf-sup formulation and a bilevel approach. The choice between them depends on whether the unknown parameters introduce concavity in the objective. In the inf-sup framework, we use the linearity of GPs and their parameterization structure to maintain convex-concave properties, allowing us to apply standard convex optimization algorithms. In the bilevel framework, we employ a gradient-descent-based algorithm and introduce two methods for computing the outer gradient. The first method leverages an existing solver for the inner potential MFG and applies automatic differentiation, while the second adopts an adjoint-based strategy that computes the outer gradient independently of the inner solver. Our numerical experiments show that when sufficient prior information is available, the unknown parameters can be accurately recovered. Otherwise, if prior information is limited, the inverse problem is ill-posed, but our frameworks can still produce surrogate MFG models that closely match observed data. These data-consistent models offer insights into underlying dynamics and enable applications such as forecasting and scenario analysis. Finally, because typical potential MFGs are formulated as linear PDE-constrained convex minimization problems, our methods naturally extend to other inverse problems in linear PDE-constrained convex settings.
Copyright and License
© 2025 Elsevier Inc. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
Acknowledgement
XY acknowledges support from the Air Force Office of Scientific Research through MURI award FA9550-20-1-0358 (Machine Learning and Physics-Based Modeling and Simulation). CM acknowledges the financial support of the Hong Kong Research Grants Council (RGC) under the Grants No. GRF 11311422 and GRF 11303223.
Contributions
Jingguo Zhang: Writing – review & editing, Writing – original draft, Visualization, Validation, Software, Methodology, Investigation. Xianjin Yang: Writing – review & editing, Writing – original draft, Visualization, Validation, Supervision, Software, Project administration, Methodology, Investigation, Formal analysis, Conceptualization. Chenchen Mou: Resources. Chao Zhou: Resources, Funding acquisition.
Data Availability
Data will be made available on request.
Additional details
Related works
- Is new version of
- Discussion Paper: arXiv:2502.11506 (arXiv)
Funding
- United States Air Force Office of Scientific Research
- FA9550-20-1-0358
- University Grants Committee
- GRF 11311422
- University Grants Committee
- GRF 11303223
Dates
- Available
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2025-10-01Available online
- Available
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2025-10-09Version of record