Abstract

We consider the optimal control problem for stochastic differential equations (SDEs) with random coefficients under the recursive-type objective functional captured by the backward SDE (BSDE). Due to the random coefficients, the associated Hamilton–Jacobi–Bellman (HJB) equation is a class of second-order stochastic PDEs (SPDEs) driven by Brownian motion, which we call the stochastic HJB (SHJB) equation. In addition, as we adopt the recursive-type objective functional, the drift term of the SHJB equation depends on the second component of its solution. These two generalizations cause several technical intricacies, which do not appear in the existing literature. We prove the dynamic programming principle (DPP) for the value function, for which unlike the existing literature we have to use the backward semigroup associated with the recursive-type objective functional. By the DPP, we are able to show the continuity of the value function. Using the Itô–Kunita’s formula, we prove the verification theorem, which constitutes a sufficient condition for optimality and characterizes the value function, provided that the smooth (classical) solution of the SHJB equation exists. In general, the smooth solution of the SHJB equation may not exist. Hence, we study the existence and uniqueness of the solution to the SHJB equation under two different weak solution concepts. First, we show, under appropriate assumptions, the existence and uniqueness of the weak solution via the Sobolev space technique, which requires converting the SHJB equation to a class of backward stochastic evolution equations. The second result is obtained under the notion of viscosity solutions, which is an extension of the classical one to the case for SPDEs. Using the DPP and the estimates of BSDEs, we prove that the value function is the viscosity solution to the SHJB equation. For applications, we consider the linear-quadratic problem, the utility maximization problem, and the European option pricing problem. Specifically, different from the existing literature, each problem is formulated by the generalized recursive-type objective functional and is subject to random coefficients. By applying the theoretical results of this paper, we obtain the explicit optimal solution for each problem in terms of the solution of the corresponding SHJB equation.

Highlights

  • Let (, F, P, {Fs}s≥0) be a complete filtered probability space, on which an r-dimensional standard Brownian motion, B, is defined, where {Fs}s≥0 is a natural filtration generated by B augmented by all the P-null sets in F

  • 5 Conclusions We have considered the stochastic optimal control problem with random coefficients under the recursive-type objective functional captured by the backward stochastic differential equation (SDE) (BSDE)

  • Due to the recursivetype BSDE objective functional with random coefficients, the problem in this paper introduces several technical intricacies, which do not appear in the existing literature

Read more

Summary

Introduction

Let ( , F , P, {Fs}s≥0) be a complete filtered probability space, on which an r-dimensional standard Brownian motion, B, is defined, where {Fs}s≥0 is a natural filtration generated by B augmented by all the P-null sets in F. By applying the verification theorem of Theorem 2, we obtain an explicit linear state-feedback optimal solution in terms of the solution of the corresponding SHJB equation (see Proposition 2) This result can be viewed as an extension of [25, 26, 43,44,45] to the problem with the recursive-type quadratic objective functional Regarding the statement in (f ), we provide different aspects of the classical utility maximization and European option-pricing problems studied in the literature (e.g., [12, 13, 20, 47, 48]) These two applications (see Propositions 3 and 4) consider the case of recursive-type BSDE objective functionals with random coefficients, which have not been studied in the existing literature

Notation
Problem statement
European option pricing with random coefficients
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call