Mean-field game equilibrium calibrated to historical de-pegs attributes most peg recovery to primary-market arbitrage and identifies a nonlinear stress threshold for slow recovery.
Solving continuous mean field games: Deep reinforcement learning for non- stationary dynamics,
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Who Restores the Peg? A Mean-Field Game Approach to Model Stablecoin Market Dynamics
Mean-field game equilibrium calibrated to historical de-pegs attributes most peg recovery to primary-market arbitrage and identifies a nonlinear stress threshold for slow recovery.