Peter Green has been elected Chair of the Biometrika Trust, and took office on 1 December 2023 Biometrika is one of the leading statistics journals in the world, and over the decades its pages have publishedmany of the seminal works of our discipline. It was founded in 1901 by Karl Pearson, Francis Galton and Raphael […]
Archive | 2023
New papers shed light on wildcat mystery
New research from the Institute for Statistical Science has shown that wildcats in Britain lived alongside domestic cats since their introduction 2,000 years by the Romans, but only started interbreeding 60 years ago. Dan Lawson worked with Mark Beaumont from Biology and NERC-funded Bristol PhD student Jo Howard-McCombe from the Royal Zoological Society of Scotland […]
Four papers accepted at NeurIPS
NeurIPS is the world’s premier conference in Machine Learning and Artificial Intelligence. Competition to publish in the peer-reviewed proceedings of NeurIPS is very intense. Over 12,000 papers were submitted to NeurIPS 2023, which will be held in New Orleans in December. Members of the Institute for Statistical Science in the School of Mathematics had another […]
Earthquake Forecasting Paper published in American Geophysical Union journal: Earth’s Future
COMPASS Student Sam Stockman and Statistics Institute member Dan Lawson have worked collaboratively with seismologist Max Werner from the School of Earth Sciences to publish a paper into the American Geophysical Union journal; Earth’s Future. Titled ‘Forecasting the 2016-2017 Central Apennines Earthquake Sequence with a Neural Point Process’, the paper constructs a temporal point process […]
Papers on high-dimensional time series modelling accepted into Journal of the American Statistical Association and Journal of Business & Economic Statistics
Dr Haeran Cho and Dom Owens (COMPASS PhD student), in collaboration with Prof Matteo Barigozzi (Bologna), have had a new paper accepted into Journal of Business & Economic Statistics. Titled ‘FNETS: Factor-adjusted network estimation and forecasting for high-dimensional time series’, the paper proposes a new model for high-dimensional time series data exhibiting dominant dependence, a […]
Maths students win bronze at International Mathematics Competition
Congratulations to Samuel Kelly, Samson Main & Thammadol Tansrivorarat who all struck bronze at the IMC for University Students On behalf of everybody in the School of Maths, we would like to congratulate Samuel, Samson & Thammadol on their medals. The recent competition took place in Blagoevgrad, Bulgaria between 31st July-6th August and featured just […]
Pure Mathematics welcomes Dr Alice Pozzi
Dr Pozzi received her PhD degree in 2018 from McGill University in Montreal, under the supervision of Henri Darmon and Payman Kassei. As a postdoctoral researcher, she has worked with Sarah Zerbes at University College London and she held a Chapman Fellowship in Pure Mathematics at Imperial College London. Her research interests cover a broad […]
Statistics Institute welcomes two new lecturers
The Institute for Statistical Science is very pleased to welcome Dr Juliette (Ettie) Unwin and Dr Katarzyna Reluga, who have both joined as Lecturers in Statistical Science. Dr Unwin’s PhD was in uncertainty quantification in engineering systems using the Multilevel Monte Carlo method at the University of Cambridge. Then she switched fields to modelling infectious […]
Prof. Jens Eggers awarded 2023 LMS Naylor Prize
Congratulations to Prof. Jens Eggers, who has been awarded the 2023 London Mathematical Society Naylor Prize. The School of Mathematics is delighted to congratulate Prof. Jens Eggers on his recent award of the Naylor prize from the London Mathematical Society. He has been cited for his profound contributions to the theoretical understanding of singularities, and […]
Epidemic modelling paper published in JRSS(B)
Current and former Statistics Institute members Michael Whitehouse, Nick Whiteley and Lorenzo Rimella have had a paper related to epidemic modelling accepted in the Journal of the Royal Statistical Society Series B. The paper introduces Poisson Approximate Likelihood (PAL) methods for fitting stochastic compartmental models. Compartmental modelling is one of the most widespread methods for […]