Indefinite Linear-Quadratic Partially Observed Mean-Field Game
Indefinite Linear-Quadratic Partially Observed Mean-Field Game
This paper investigates an indefinite linear-quadratic partially observed mean-field game with common noise, incorporating both state-average and control-average effects. In our model, each agent's state is observed through both individual and public observations, which are modeled as general stochastic processes rather than Brownian motions. {It is noteworthy that} the weighting matrices in the cost functional are allowed to be indefinite. We derive the optimal decentralized strategies using the Hamiltonian approach and establish the well-posedness of the resulting Hamiltonian system by employing a relaxed compensator. The associated consistency condition and the feedback representation of decentralized strategies are also established. Furthermore, we demonstrate that the set of decentralized strategies form an $\varepsilon$-Nash equilibrium. As an application, we solve a mean-variance portfolio selection problem.
Tian Chen、Tianyang Nie、Zhen Wu
数学
Tian Chen,Tianyang Nie,Zhen Wu.Indefinite Linear-Quadratic Partially Observed Mean-Field Game[EB/OL].(2025-08-03)[2025-08-19].https://arxiv.org/abs/2508.01568.点此复制
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