14:15
14:15
10:00
12:00
15:15
14:15
16:30
16:15
14:30
A normal form of Richardson elements for parabolic subalgebras of the classical Lie algebras
Applications of radial basis functions
Abstract
I will describe some application areas for radial basis function, and discuss how the computational problems can be overcome by the use of preconditioning methods and fast evaluation techniques.
11:00
17:00
17:00
17:00
17:00
Oscillations and concentrations in sequences of gradients
15:45
15:45
14:15
14:15
Some aspects of model uncertainty and robustness in finance
12:00
10:30
16:30
14:00
The contact-line of dynamics of cell spreading and crawling
16:30
14:30
tba
Abstract
This Seminar has been cancelled and will now take place in Trinity Term, Week 3, 11 MAY.
11:00
12:00
12:00
Identification of the stress-energy tensor through conformal restriction in SLE and related processes.
17:00
Minimum energy configurations of classical charges in the potential of an atomic nucleus: Large N asymptotics
15:45
Thoughts about the transition function of jump-type Markov processes
14:15
Branching diffusion on Lobachevsky space with variable fission: the Hausdorff dimension of the limiting set
14:15
A GIT construction of the moduli space of stable maps
10:30
14:15
The Cost of Assuming Continuous Trading in Underlying Financial Securities
16:00
Inverse problems and stochastic differential equations
Abstract
Using the one-dimensional diffusion equation as an example, this seminar looks at ways of constructing approximations to the solution and coefficient functions of differential equations when the coefficients are not fully defined. There may, however, be some information about the solution. The input data, usually given as values of a small number of functionals of the coefficients and the solution, is insufficient for specifying a well-posed problem, and so various extra assumptions are needed. It is argued that looking at these inverse problems as problems in Bayesian statistics is a unifying approach. We show how the standard methods of Tikhonov Regularisation are related to special forms of random field. The numerical approximation of stochastic partial differential Langevin equations to sample generation will be discussed.