17:00
17:00
17:00
15:45
Conditional Cameron-Martin's formula for diffusions
Abstract
I will present a new formula for diffusion processes which involving
Ito integral for the transition probability functions. The nature of
the formula I discovered is very close to the Kac formula, but its
form is similar to the Cameron-Martin formula. In some sense it is the
Cameron-Martin formula for pinned diffusions.
14:30
14:15
14:15
Endogeny and Dynamics for processes indexed by trees
Abstract
I will consider a stochastic process ( \xi_u; u \in
\Gamma_\infty ) where \Gamma_\infty is the set of vertices of an
infinite binary tree which satisfies some recursion relation
\xi_u= \phi(\xi_{u0},\xi_{u1}, \epsilon_u) \text { for each } u \in \Gamma_\infty.
Here u0 and u1 denote the two immediate daughters of the vertex u.
The random variables ( \epsilon_u; u\in \Gamma_\infty), which
are to be thought of as innovations, are supposed independent and
identically distributed. This type of structure is ubiquitous in models
coming from applied proability. A recent paper of Aldous and Bandyopadhyay
has drawn attention to the issue of endogeny: that is whether the process
( \xi_u; u \in \Gamma_\infty) is measurable with respect to the
innovations process. I will explain how this question is related to the
existence of certain dynamics and use this idea to develop a necessary and
sufficient condition [ at least if S is finite!] for endogeny in terms of
the coupling rate for a Markov chain on S^2 for which the diagonal is
absorbing.
16:30
15:15
Asymptotics and oscillation
Abstract
Much is now known about exp-log series, and their connections with o-
minimality and Hardy fields. However applied mathematicians who work with
differential equations, almost invariably want series involving
trigonometric functions which those theories exclude. The seminar looks at
one idea for incorporating oscillating functions into the framework of
Hardy fields.
14:15
16:30
Boundary Value Problems on Measure Chains
Abstract
When modelling a physical or biological system, it has to be decided
what framework best captures the underlying properties of the system
under investigation. Usually, either a continuous or a discrete
approach is adopted and the evolution of the system variables can then
be described by ordinary or partial differential equations or
difference equations, as appropriate. It is sometimes the case,
however, that the model variables evolve in space or time in a way
which involves both discrete and continuous elements. This is best
illustrated by a simple example. Suppose that the life span of a
species of insect is one time unit and at the end of its life span,
the insect mates, lays eggs and then dies. Suppose the eggs lie
dormant for a further 1 time unit before hatching. The `time-scale' on
which the insect population evolves is therefore best represented by a
set of continuous intervals separated by discrete gaps. This concept
of `time-scale' (or measure chain as it is referred to in a slightly
wider context) can be extended to sets consisting of almost arbitrary
combinations of intervals, discrete points and accumulation points,
and `time-scale analysis' defines a calculus, on such sets. The
standard `continuous' and `discrete' calculus then simply form special
cases of this more general time scale calculus.
In this talk, we will outline some of the basic properties of time
scales and time scale calculus before discussing some if the
technical problems that arise in deriving and analysing boundary
value problems on time scales.
14:30
Computational fluid dynamics
Abstract
The computation of flows of compressible fluids will be
discussed, exploiting the symmetric form of the equations describing
compressible flow.
17:00
15:45
Isoperimetric inequalities for independent variables
Abstract
We shall review recent progress in the understanding of
isoperimetric inequalities for product probability measures (a very tight
description of the concentration of measure phenomeonon). Several extensions
of the classical result for the Gaussian measure were recently derived by
functional analytic methods.
14:15
14:15
About the Hopfield model of spin-glasses
Abstract
The Hopfield model took his name and its popularity within the theory
of formal neural networks. It was introduced in 1982 to describe and
implement associative memories. In fact, the mathematical model was
already defined, and studied in a simple form by Pastur and Figotin in
an attempt to describe spin-glasses, which are magnetic materials with
singular behaviour at low temperature. This model indeed shows a very
complex structure if considered in a slightly different regime than
the one they studied. In the present talk we will focus on the
fluctuations of the free energy in the high-temperature phase. No
prior knowledge of Statistical mechanics is required to follow the
talk.