Title of article :
A Stochastic Maximum Principle for Partially Observed Optimal Control Problem of Mckean–Vlasov FBSDEs with Random Jumps
Author/Authors :
Abba ، Khedidja Department of Mathematics - Laboratory of Mathematical Analysis Probability and Optimizations - Biskra University , Lakhdari ، Imad Eddine Department of Mathematics - Laboratory of Mathematical Analysis Probability and Optimizations - Biskra University
From page :
1
To page :
30
Abstract :
In this paper,we study the stochastic maximum principle for partially observed optimal control problem of forward–backward stochastic differential equations of McKean– Vlasov type driven by a Poisson random measure and an independent Brownian motion. The coefficients of the system and the cost functional depend on the state of the solution process as well as of its probability law and the control variable. Necessary and sufficient conditions of optimality for this systems are established under assumption that the control domain is supposed to be convex. Our main result is based on Girsavov’s theorem and the derivatives with respect to probability law. As an illustration, a partially observed linear–quadratic control problem of McKean–Vlasov forward–backward stochastic differential equations type is studied in terms of the stochastic filtering.
Keywords :
Stochastic maximum principle , Forward–backward stochastic differential equations with jump processes , Partially observed optimal control , McKean–Vlasov differential equations , Derivative with respect to probability measures ,
Journal title :
Bulletin of the Iranian Mathematical Society
Journal title :
Bulletin of the Iranian Mathematical Society
Record number :
2757119
Link To Document :
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