On the numerical solution of Backward Stochastic Differential Equations
Author(s)
Manolarakis, Konstantinos E.
Type
Thesis or dissertation
Abstract
We study the problem'bfthe numerical solution to BSDEs from a weak approximation viewpoint. The first step I~'lo built the framework that represents the approximating step processes (yx ,Zx) as iter~\tons of a certain family of operators. We then state an assumption that catches the error induced on the algorithm by the method one uses to compute the involved conditional expectations. This provides us with a global rate of convergence. As a first example we present the Malliavin calculus method. For this one we also suggest ways to simplify the complexity of the weights' used in the Monte Carlo simulations. Next we apply the cubature method to compute the conditional e~pectations. The latter is more-. illustrating as how one may depart from the standard practice of using an Euler scheme for the underlying process and Monte Carlo methods in the simulation of the random variables.
Version
Imperial Users only
Date Issued
2007-01
Creator
Manolarakis, Konstantinos E.
Publisher Institution
Imperial College London (University of London)
Qualification Level
Doctoral
Qualification Name
Doctor of Philosophy (PhD)