Flashes and rainbows in tournaments
Girao, A Illingworth, F Michel, L Savery, M Scott, A Combinatorica volume 44 issue 3 675-690 (04 Apr 2024)
Thu, 30 May 2024

14:00 - 15:00
Rutherford Appleton Laboratory, nr Didcot

This seminar has been cancelled

Marta Betcke
(University College London)
Abstract

Joint work Marta Betcke and Bolin Pan

In photoacoustic tomography (PAT) with flat sensor, we routinely encounter two types of limited data. The first is due to using a finite sensor and is especially perceptible if the region of interest is large relatively to the sensor or located farther away from the sensor. In this talk we focus on the second type caused by a varying sensitivity of the sensor to the incoming wavefront direction which can be modelled as binary i.e. by a cone of sensitivity. Such visibility conditions result, in Fourier domain, in a restriction of the data to a bowtie, akin to the one corresponding to the range of the forward operator but further narrowed according to the angle of sensitivity. 

We show how we can separate the visible and invisible wavefront directions in PAT image and data using a directional frame like Curvelets, and how such decomposition allows for decoupling of the reconstruction involving application of expensive forward/adjoint solvers from the training problem. We present fast and stable approximate Fourier domain forward and adjoint operators for reconstruction of the visible coefficients for such limited angle problem and a tailored UNet matching both the multi-scale Curvelet decomposition and the partition into the visible/invisible directions for learning the invisible coefficients from a training set of similar data.

Modularity of the segmentation clock and morphogenesis
Hammond, J Baker, R Verd, B (2024)
Image of the maths in the video

Our new short film series 'Show Me the Maths' doesn't beat about the mathematical bush. It gets right down to it. Down, that is, to the maths, in all its crucial, complex, sometimes incomprehensible (even to other mathematicians) guises. It's what mathematicians do.

The series will feature research in Number Theory, Mathematical Biology and the History of Mathematics, amongst others. First up: Arun Soor.

Tue, 05 Mar 2024
11:00
Lecture room 5

Level lines of the massive planar Gaussian free field

Léonie Papon
(University of Durham)
Abstract

The massive planar Gaussian free field (GFF) is a random distribution defined on a subset of the complex plane. As a random distribution, this field a priori does not have well-defined level lines. In this talk, we give a meaning to this concept by constructing a coupling between a massive GFF and a random collection of loops, called massive CLE_4, in which the loops can naturally be interpreted as the level lines of the field. This coupling is constructed by appropriately reweighting the law of the standard GFF-CLE_4 coupling and this construction can be seen as a conditional version of the path-integral formulation of the massive GFF. We then relate massive CLE_4 to a massive version of the Brownian loop soup. This provides a more direct construction of massive CLE_4 and proves a conjecture of Camia.

Tue, 13 Feb 2024

14:00 - 15:00
L4

On the $(k+2,k)$-problem of Brown, Erdős and Sós

Oleg Pikhurko
(University of Warwick)
Abstract

Brown-Erdős-Sós initiated the study of the maximum number of edges in an $n$-vertex $r$-graph such that no $k$ edges span at most $s$ vertices. If $s=rk-2k+2$ then this function is quadratic in $n$ and its asymptotic was previously known for $k=2,3,4$. I will present joint work with Stefan Glock, Jaehoon Kim, Lyuben Lichev and Shumin Sun where we resolve the cases $k=5,6,7$.

Image of logs (banner for lecture)

During the pandemic, you may have seen graphs of data plotted on strange-looking (logarithmic) scales. Oliver will explain some of the basics and history of logarithms, and show why they are a natural tool to represent numbers ranging from COVID data to Instagram followers. In fact, we’ll see how logarithms can even help us understand information itself in a mathematical way.

Investigating graph neural networks and classical feature-extraction techniques in activity-cliff and molecular property prediction
Dablander, M
Diffusion Models for Generative Artificial Intelligence: An Introduction for Applied Mathematicians.
Higham, C Higham, D Grindrod, P CoRR volume abs/2312.14977 (2023)
Cubic-quartic regularization models for solving polynomial subproblems in third-order tensor methods
Cartis, C Zhu, W Mathematical Programming 1-53 (06 Jan 2025)
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