Dimension reduction for multivariate extreme value theory

Multivariate extreme value theory exhibits a complex dependence structure which is often described by underlying physical or economical phenomena. This means that observations of data of extremes are usually driven by fewer actual events than number of observations taken. Reducing dimensionality allows to approximately recover this hidden causal structure from the data. However classical statistical methodology is not directly applicable to the setting of extremes, thus there is a need for new methods.

The research project will focus on developing an approach to such a new method, then study its statistical behavior and properties. Furthermore we want to evaluate its performance on datasets from meteorology and finance, with the goal to provide useful new tools for studying extreme events in applications.

  • Dec 05th 2024, Torsten Reuter succesfully defended his PhD thesis on "D-optimal Subsampling Design for Massive Data"
  • Dec 03rd 2024, Xiangying Chen succesfully defended his PhD thesis on "Conditional Erlangen Program"

...more
  • Dec 05th 2024, Torsten Reuter succesfully defended his PhD thesis on "D-optimal Subsampling Design for Massive Data"
  • Dec 03rd 2024, Xiangying Chen succesfully defended his PhD thesis on "Conditional Erlangen Program"

...more