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Dynamic Programming for General Linear Quadratic Optimal Stochastic Control with Random Coefficients

Abstract

We are concerned with the linear-quadratic optimal stochastic control problem with random coefficients. Under suitable conditions, we prove that the value field V(t,x,ω),(t,x,ω)[0,T]×Rn×ΩV(t,x,\omega), (t,x,\omega)\in [0,T]\times R^n\times \Omega, is quadratic in xx, and has the following form: V(t,x)=Ktx,xV(t,x)=\langle K_tx, x\rangle where KK is an essentially bounded nonnegative symmetric matrix-valued adapted processes. Using the dynamic programming principle (DPP), we prove that KK is a continuous semi-martingale of the form Kt=K0+0tdks+i=1d0tLsidWsi,t[0,T]K_t=K_0+\int_0^t \, dk_s+\sum_{i=1}^d\int_0^tL_s^i\, dW_s^i, \quad t\in [0,T] with kk being a continuous process of bounded variation and E[(0TLs2ds)p]<,p2;E\left[\left(\int_0^T|L_s|^2\, ds\right)^p\right] <\infty, \quad \forall p\ge 2; and that (K,L)(K, L) with L:=(L1,,Ld)L:=(L^1, \cdots, L^d) is a solution to the associated backward stochastic Riccati equation (BSRE), whose generator is highly nonlinear in the unknown pair of processes. The uniqueness is also proved via a localized completion of squares in a self-contained manner for a general BSRE. The existence and uniqueness of adapted solution to a general BSRE was initially proposed by the French mathematician J. M. Bismut (1976, 1978). It had been solved by the author (2003) via the stochastic maximum principle with a viewpoint of stochastic flow for the associated stochastic Hamiltonian system. The present paper is its companion, and gives the {\it second but more comprehensive} adapted solution to a general BSRE via the DDP. Further extensions to the jump-diffusion control system and to the general nonlinear control system are possible.Comment: 16 page

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