Wed, 16 Feb 2022

14:00 - 16:00
Virtual

Topics on Nonlinear Hyperbolic PDEs

Gui-Qiang G. Chen
(Oxford University)
Further Information

Dates/ Times (GMT): 2pm – 4pm Wednesdays 9th, 16th, 23rd Feb, and 2nd March

Course Length: 8 hrs total (4 x 2 hrs)

Abstract

Aimed: An introduction to the nonlinear theory of hyperbolic PDEs, as well as its close connections with the other areas of mathematics and wide range of applications in the sciences.

Wed, 09 Feb 2022

14:00 - 16:00
Virtual

Topics on Nonlinear Hyperbolic PDEs

Gui-Qiang G. Chen
(Oxford University)
Further Information

Dates/ Times (GMT): 2pm – 4pm Wednesdays 9th, 16th, 23rd Feb, and 2nd March

Course Length: 8 hrs total (4 x 2 hrs)

Abstract

Aimed: An introduction to the nonlinear theory of hyperbolic PDEs, as well as its close connections with the other areas of mathematics and wide range of applications in the sciences.

Two Problems on Homogenization in Geometry
Ivrii, O Marković, V Extended Abstracts Fall 2019 volume 12 99-103 (19 Nov 2021)
!-Graphs with Trivial Overlap are Context-Free
Kissinger, A Zamdzhiev, V Electronic Proceedings in Theoretical Computer Science volume 181 16-31 (10 Apr 2015)
Generalised Compositional Theories and Diagrammatic Reasoning
Coecke, B Duncan, R Kissinger, A Wang, Q Quantum Theory: Informational Foundations and Foils volume 181 309-366 (09 Dec 2016)
Thu, 13 Jan 2022

16:00 - 17:00
Virtual

Regularity structures and machine learning

Ilya Chevyrev
(Edinburgh University)
Further Information
Abstract

In many machine learning tasks, it is crucial to extract low-dimensional and descriptive features from a data set. In this talk, I present a method to extract features from multi-dimensional space-time signals which is motivated, on the one hand, by the success of path signatures in machine learning, and on the other hand, by the success of models from the theory of regularity structures in the analysis of PDEs. I will present a flexible definition of a model feature vector along with numerical experiments in which we combine these features with basic supervised linear regression to predict solutions to parabolic and dispersive PDEs with a given forcing and boundary conditions. Interestingly, in the dispersive case, the prediction power relies heavily on whether the boundary conditions are appropriately included in the model. The talk is based on the following joint work with Andris Gerasimovics and Hendrik Weber: https://arxiv.org/abs/2108.05879

The burden and dynamics of hospital-acquired SARS-CoV-2 in England
Cooper, B Evans, S Jafari, Y Pham, T Lim, C Pritchard, M Pople, D Hall, V Stimson, J Eyre, D Read, J Donnelly, C Horby, P Watson, C Funk, S Robotham, J Knight, G Yin, M
Lithological tomography with the correlated pseudo-marginal method
Friedli, L Linde, N Ginsbourger, D Doucet, A Geophysical Journal International volume 228 issue 2 839-856 (23 Sep 2021)
Non-reversible parallel tempering: a scalable highly parallel MCMC scheme
Syed, S Bouchard-Cote, A Deligiannidis, G Doucet, A Journal of the Royal Statistical Society: Series B volume 84 issue 2 321-350 (03 Dec 2021)
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