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Equilibrium Selection in Replicator Equations Using Adaptive-Gain Control

Authors :
Zino, Lorenzo
Ye, Mengbin
Calafiore, Giuseppe Carlo
Rizzo, Alessandro
Publication Year :
2024

Abstract

In this paper, we deal with the equilibrium selection problem, which amounts to steering a population of individuals engaged in strategic game-theoretic interactions to a desired collective behavior. In the literature, this problem has been typically tackled by means of open-loop strategies, whose applicability is however limited by the need of accurate a priori information on the game and scarce robustness to uncertainty and noise. Here, we overcome these limitations by adopting a closed-loop approach using an adaptive-gain control scheme within a replicator equation -a nonlinear ordinary differential equation that models the evolution of the collective behavior of the population. For most classes of 2-action matrix games we establish sufficient conditions to design a controller that guarantees convergence of the replicator equation to the desired equilibrium, requiring limited a-priori information on the game. Numerical simulations corroborate and expand our theoretical findings.<br />Comment: Under Review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.09305
Document Type :
Working Paper