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Learning optimal policies in potential Mean Field Games: Smoothed Policy Iteration algorithms

Authors :
Tang, Qing
Song, Jiahao
Publication Year :
2022

Abstract

We introduce two Smoothed Policy Iteration algorithms (\textbf{SPI}s) as rules for learning policies and methods for computing Nash equilibria in second order potential Mean Field Games (MFGs). Global convergence is proved if the coupling term in the MFG system satisfy the Lasry Lions monotonicity condition. Local convergence to a stable solution is proved for system which may have multiple solutions. The convergence analysis shows close connections between \textbf{SPI}s and the Fictitious Play algorithm, which has been widely studied in the MFG literature. Numerical simulation results based on finite difference schemes are presented to supplement the theoretical analysis.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2212.04791
Document Type :
Working Paper