Counting partitions of Gn,1/2 with degree congruence conditions
Balister, P Powierski, E Scott, A Tan, J Random Structures and Algorithms volume 62 issue 3 564-584 (01 May 2023)
Diameter‐free estimates for the quadratic Vinogradov mean value theorem
Mudgal, A Proceedings of the London Mathematical Society volume 126 issue 1 76-128 (26 Sep 2022)
Examples of Equivariant Lagrangian Mean Curvature Flow
Lotay, J Current Trends in Analysis, its Applications and Computation 475-482 (18 Oct 2022)
Getting the most out of maths: how to coordinate mathematical modelling research to support a pandemic, lessons learnt from three initiatives that were part of the COVID-19 response in the UK
Dangerfield, C Abrahams, I Budd, C Butchers, M Cates, M Champneys, A Currie, C Enright, J Gog, J Goriely, A Hollingsworth, T Maini, P Journal of Theoretical Biology volume 557 (30 Oct 2022)
Tue, 01 Nov 2022

14:00 - 15:00
L5

Generating random regular graphs quickly

Oliver Riordan
(Oxford University)
Abstract

A random $d$-regular graph is just a $d$-regular simple graph on $[n]=\{1,2,\ldots,n\}$ chosen uniformly at random from all such graphs. This model, with $d=d(n)$, is one of the most natural random graph models, but is quite tricky to work with/reason about, since actually generating such a graph is not so easy. For $d$ constant, Bollobás's configuration model works well; for larger $d$ one can combine this with switching arguments pioneered by McKay and Wormald. I will discuss recent progress with Nick Wormald, pushing linear-time generation up to $d=o(\sqrt{n})$. One ingredient is reciprocal rejection sampling, a trick for 'accepting' a certain graph with a probability proportional to $1/N(G)$, where $N(G)$ is the number of certain configurations in $G$. The trick allows us to do this without calculating $N(G)$, which would take too long.

Thu, 03 Nov 2022
16:00
Virtual

Signatures and Functional Expansions

Bruno Dupire
(Bloomberg)

Note: we would recommend to join the meeting using the Teams client for best user experience.

Further Information
Abstract

European option payoffs can be generated by combinations of hockeystick payoffs or of monomials. Interestingly, path dependent options can be generated by combinations of signatures, which are the building blocks of path dependence. We focus on the case of 1 asset together with time, typically the evolution of the price x as a function of the time t. The signature of a path for a given word with letters in the alphabet {t,x} (sometimes called augmented signature of dimension 1) is an iterated Stratonovich integral with respect to the letters of the word and it plays the role of a monomial in a Taylor expansion. For a given time horizon T the signature elements associated to short words are contained in the linear space generated by the signature elements associated to longer words and we construct an incremental basis of signature elements. It allows writing a smooth path dependent payoff as a converging series of signature elements, a result stronger than the density property of signature elements from the Stone-Weierstrass theorem. We recall the main concepts of the Functional Itô Calculus, a natural framework to model path dependence and draw links between two approximation results, the Taylor expansion and the Wiener chaos decomposition. The Taylor expansion is obtained by iterating the functional Stratonovich formula whilst the Wiener chaos decomposition is obtained by iterating the functional Itô formula applied to a conditional expectation. We also establish the pathwise Intrinsic Expansion and link it to the Functional Taylor Expansion.

Tue, 01 Nov 2022

14:00 - 15:00
L3

HiGHS: From gradware to software and Impact

Dr Julian Hall
(University of Edinburgh)
Abstract

HiGHS is open-source optimization software for linear programming, mixed-integer programming, and quadratic programming. Created initially from research solvers written by Edinburgh PhD students, HiGHS attracted industrial funding that allowed further development, and saw it contribute to a REF 2021 Impact Case Study. Having been identified as a game-changer by the open-source energy systems planning community, the resulting crowdfunding campaign has received large donations that will allow the HiGHS project to expand and create further Impact.

This talk will give an insight into the state-of-the-art techniques underlying the linear programming solvers in HiGHS, with a particular focus on the challenge of solving sequences of linear systems of equations with remarkable properties. The means by which "gradware" created by PhD students has been transformed into software, generating income and Impact, will also be described. Independent benchmark results will be given to demonstrate that HiGHS is the world’s best open-source linear optimization software.

 

Contrasting aims and approaches in the study of ancient Egyptian mathematics in the 1920s
Hollings, C Parkinson, R Revue d'Histoire des Mathematiques volume 28 issue 2 183-286 (01 Nov 2022)
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