Backward Stochastic Differential Equations with Non-Markovian Singular Terminal Conditions with General Driver and Filtration

Abstract

We consider a class of Backward Stochastic Differential Equations with superlinear driver process f adapted to a filtration supporting at least a d dimensional Brownian motion and a Poisson random measure on Rm- \0\. We consider the following class of terminal conditions 1 = ∞ · 1\τ1 T\ where τ1 is any stopping time with a bounded density in a neighborhood of T and 2 = ∞ · 1AT where At, t ∈ [0,T] is a decreasing sequence of events adapted to the filtration Ft that is continuous in probability at T. A special case for 2 is AT = \τ2 > T\ where τ2 is any stopping time such that P(τ2 =T) =0. In this setting we prove that the minimal supersolutions of the BSDE are in fact solutions, i.e., they attain almost surely their terminal values. We further show that the first exit time from a time varying domain of a d-dimensional diffusion process driven by the Brownian motion with strongly elliptic covariance matrix does have a continuous density; therefore such exit times can be used as τ1 and τ2 to define the terminal conditions 1 and 2. The proof of existence of the density is based on the classical Green's functions for the associated PDE.

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