Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/75558
Type: Thesis
Title: Financial risk measures : the theory and applications of backward stochastic difference / differential equations with respect to the single jump process.
Author: Shen, Bin. (Leo Shen)
Issue Date: 2012
School/Discipline: School of Mathematical Sciences
Abstract: This thesis studies financial risk measures which dynamically assign a value to a risk at a future date which can be interpreted as the present value of a future monetary value. In particular, the theories of backward stochastic difference equations in discrete time and differential equations in continuous time (BSDE) with respect to a single jump process are developed. Based on these theories, some associated dynamic risk measures are defined. Chapter 1 is an introduction to the background of BSDEs, risk measures, and the single jump process, and also outlines the structure of this thesis. Part I considers backward stochastic difference equations related to a discrete finite time single jump process (Chapter 2) and backward stochastic differential equations related to a finite continuous time single jump process (Chapter 3). We prove the existence and uniqueness of solutions of these BSDEs under some assumptions. Comparison Theorems for these solutions are also given. Applications to the theory of nonlinear expectations are then investigated. Part II considers some applications of the theories established in Part I. In Chapter 4, risk measures related to the solutions of backward stochastic difference equations with respect to a discrete time single jump process are defined and some simple numerical examples are given. In Chapter 5, we consider the question of an optimal transaction between two investors to minimize their risks. We define a dynamic entropic risk measure using backward stochastic differential equations related to a continuous time single jump process. The inf-convolution of dynamic entropic risk measures is a key transformation in solving the optimization problem.
Advisor: Elliott, Robert James
Dissertation Note: Thesis (Ph.D.) -- University of Adelaide, School of Mathematical Sciences, 2012
Keywords: static risk measure; dynamic risk measure; inf-convolution; dynamic entropic risk measure; non-linear expectation; comparison theorem; single jump process; backward stochastic difference / differential equation
Provenance: Copyright material removed from digital thesis. See print copy in University of Adelaide Library for full text.
Appears in Collections:Research Theses

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