Multiscale methods for stochastic differential equations and applications
Abstract
This thesis is on multiscale methods for Stochastic Differential Equations (SDEs).
We provide theoretical results for the method of averaging for SDEs, as well as an
application to parameter inference. We first study Poisson equations and averaging
for SDEs, the former as a means of producing results on the latter. We treat Poisson
equations on non-compact state spaces for coefficients that can grow super-linearly.
This is one of the two building blocks towards the second (and main) result of the
thesis, namely we obtain a uniform in time (UiT) averaging result (with a rate) for
SDE models with super-linearly growing coefficients. Key to obtaining both our UiT
averaging result and to enable dealing with the super-linear growth of the coefficients
(both of the slow-fast system and of the associated Poisson equation) is exponential
decay in time of the space-derivatives of appropriate Markov semigroups. Motivated
by applications to mathematical biology, we then study the averaging problem for
slow-fast systems, in the case in which the fast dynamics is a stochastic process
with multiple invariant measures. We work in the setting in which the slow process
evolves according to an Ordinary Differential Equation (ODE) and the fast process
is a continuous time Markov Process with finite state space and show that, in this
setting, the limiting (averaged) dynamics can be described as a random ODE (that
is, an ODE with random coefficients.) We also present an application of the results
presented in this thesis to statistical modelling, namely parameter inference.
The content of this thesis has resulted in two papers, one submitted and one
published (see [1] and [2]), with a third close to submission.