16:30
16:30
16:30
Fitting stochastic models to partially observed dynamics
Abstract
In many applications of interest, such as the conformational
dynamics of molecules, large deterministic systems can exhibit
stochastic behaviour in a relative small number of coarse-grained
variables. This kind of dimension reduction, from a large deterministic
system to a smaller stochastic one, can be very useful in understanding
the problem. Whilst the subject of statistical mechanics provides
a wealth of explicit examples where stochastic models for coarse
variables can be found analytically, it is frequently the case
that applications of interest are not amenable to analytic
dimension reduction. It is hence of interest to pursue computational
algorithms for such dimension reduction. This talk will be devoted
to describing recent work on parameter estimation aimed at
problems arising in this context.
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Joint work with Raz Kupferman (Jerusalem) and Petter Wiberg (Warwick)
17:00
Boundary-value problems for hyperbolic steady-state equations in granular flow
15:45
15:30
14:15
Coalescence in a random background: do fluctuations matter in the analysis of structured populations?
14:15
16:30
16:00
Combinatorial equivalent of non-hyperbolic systems implies topological equivalence
15:45
The restriction property for conformally covariant measures
14:15
Rayleigh processes, real trees, and root growth with re-grafting
FILTRANE, a filter method for the nonlinear feasibility problem
Abstract
A new filter method will be presented that attempts to find a feasible
point for sets of nonlinear sets of equalities and inequalities. The
method is intended to work for problems where the number of variables
or the number of (in)equalities is large, or both. No assumption is
made about convexity. The technique used is that of maintaining a list
of multidimensional "filter entries", a recent development of ideas
introduced by Fletcher and Leyffer. The method will be described, as
well as large scale numerical experiments with the corresponding
Fortran 90 module, FILTRANE.
A divergence-free element for finite element prediction of radar cross sections
Abstract
In recent times, research into scattering of electromagnetic waves by complex objects
has assumed great importance due to its relevance to radar applications, where the
main objective is to identify targeted objects. In designing stealth weapon systems
such as military aircraft, control of their radar cross section is of paramount
importance. Aircraft in combat situations are threatened by enemy missiles. One
countermeasure which is used to reduce this threat is to minimise the radar cross
section. On the other hand, there is a demand for the enhancement of the radar cross
section of civilian spacecraft. Operators of communication satellites often request
a complicated differential radar cross section in order to assist with the tracking
of the satellite. To control the radar cross section, an essential requirement is a
capability for accurate prediction of electromagnetic scattering from complex objects.
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One difficulty which is encountered in the development of suitable numerical solution
schemes is the existence of constraints which are in excess of those needed for a unique
solution. Rather than attempt to include the constraint in the equation set, the novel
approach which is presented here involves the use of the finite element method and the
construction of a specialised element in which the relevant solution variables are
appropriately constrained by the nature of their interpolation functions. For many
years, such an idea was claimed to be impossible. While the idea is not without its
difficulties, its advantages far outweigh its disadvantages. The presenter has
successfully developed such an element for primitive variable solutions to viscous
incompressible flows and wishes to extend the concept to electromagnetic scattering
problems.
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Dr Mack has first degrees in mathematics and aeronautical engineering, plus a Masters
and a Doctorate, both in computational fluid dynamics. He has some thirty years
experience in this latter field. He pioneered the development of the innovative
solenoidal approach for the finite element solution of viscous incompressible flows.
At the time, such a radical idea was claimed in the literature to be impossible.
Much of this early research was undertaken during a six month sabbatical with the
Numerical Analysis Group at the Oxford University Computing Laboratory. Dr Mack has
since received funding from British Aerospace and the United States Department of
Defense to continue this research.
Pascal Matrices (and Mesh Generation!)
Abstract
In addition to the announced topic of Pascal Matrices (abstract below) we will speak briefly about more recent work by Per-Olof Persson on generating simplicial meshes on regions defined by a function that gives the distance from the boundary. Our first goal was a short MATLAB code and we just submitted "A Simple Mesh Generator in MATLAB" to SIAM.
This is joint work with Alan Edelman at MIT and a little bit with Pascal. They had all the ideas.
Put the famous Pascal triangle into a matrix. It could go into a lower triangular L or its transpose L' or a symmetric matrix S:
[ 1 0 0 0 ] | [ 1 1 1 1 ] | [ 1 1 1 1] | |||
L = | [ 1 1 0 0 ] | L' = | [ 0 1 2 3 ] | S = | [ 1 2 3 4] |
[ 1 2 1 0 ] | [ 0 0 1 3 ] | [ 1 3 6 10] | |||
[ 1 3 3 1 ] | [ 0 0 0 1 ] | [ 1 4 10 20] |
These binomial numbers come from a recursion, or from the formula for i choose j, or functionally from taking powers of (1 + x).
The amazing thing is that L times L' equals S. (OK for 4 by 4) It follows that S has determinant 1. The matrices have other unexpected properties too, that give beautiful examples in teaching linear algebra. The proof of L L' = S comes 3 ways, I don't know which you will prefer:
1. By induction using the recursion formula for the matrix entries.
2. By an identity for the coefficients i+j choose j in S.
3. By applying both sides to the column vector [ 1 x x2 x3 ... ]'.
The third way also gives a proof that S3 = -I but we doubt that result.
The rows of the "hypercube matrix" L2 count corners and edges and faces and ... in n dimensional cubes.
Clustering, reordering and random graphs
Abstract
From the point of view of a numerical analyst, I will describe some algorithms for:
- clustering data points based on pairwise similarity,
- reordering a sparse matrix to reduce envelope, two-sum or bandwidth,
- reordering nodes in a range-dependent random graph to reflect the range-dependency,
and point out some connections between seemingly disparate solution techniques. These datamining problems arise across a range of disciplines. I will mention a particularly new and important application from bioinformatics concerning the analysis of gene or protein interaction data.