9 research outputs found

    Risk-Sensitive Mean Field Games via the Stochastic Maximum Principle

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    In this paper, we consider risk-sensitive mean field games via the risk-sensitive maximum principle. The problem is analyzed through two sequential steps: (i) risk-sensitive optimal control for a fixed probability measure, and (ii) the associated fixed-point problem. For step (i), we use the risk-sensitive maximum principle to obtain the optimal solution, which is characterized in terms of the associated forward-backward stochastic differential equation (FBSDE). In step (ii), we solve for the probability law induced by the state process with the optimal control in step (i). In particular, we show the existence of the fixed point of the probability law of the state process determined by step (i) via Schauder???s fixed-point theorem. After analyzing steps (i) and (ii), we prove that the set of N optimal distributed controls obtained from steps (i) and (ii) constitutes an approximate Nash equilibrium or ϵ -Nash equilibrium for the N player risk-sensitive game, where ϵ???0 as N?????? at the rate of O(1N1/(n+4)) . Finally, we discuMean field game theory Risk-sensitive optimal control Forward-backward stochastic differential equations Decentralized control ss extensions to heterogeneous (non-symmetric) risk-sensitive mean field games

    Mean-Field-Type Games in Engineering

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    Principles and Overview of Sampling Methods for Modeling Macromolecular Structure and Dynamics

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