A Policy Iteration Method for Inverse Mean Field Games

Kui Ren, Nathan Soedjak, Shanyin Tong
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Abstract

We propose a policy iteration method to solve an inverse problem for a mean-field game model, specifically to reconstruct the obstacle function in the game from the partial observation data of value functions, which represent the optimal costs for agents. The proposed approach decouples this complex inverse problem, which is an optimization problem constrained by a coupled nonlinear forward and backward PDE system in the MFG, into several iterations of solving linear PDEs and linear inverse problems. This method can also be viewed as a fixed-point iteration that simultaneously solves the MFG system and inversion. We further prove its linear rate of convergence. In addition, numerical examples in 1D and 2D, along with performance comparisons to a direct least-squares method, demonstrate the superior efficiency and accuracy of the proposed method for solving inverse MFGs.
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逆均值场博弈的策略迭代法
我们提出了一种策略迭代方法来解决均场博弈模型的逆问题,具体来说,就是从价值函数的部分观测数据重建博弈中的障碍函数,而价值函数代表了代理的最优成本。所提出的方法将这个复杂的逆问题(即受 MFG 中耦合非线性前向和后向 PDE 系统约束的优化问题)解耦为求解线性 PDE 和线性逆问题的多次迭代。我们进一步证明了该方法的线性收敛速率。此外,一维和二维的数值示例,以及与直接最小二乘法的性能比较,都证明了所提方法在求解反 MFG 方面的卓越效率和准确性。
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