Go to JKU Homepage
Virtual Morphology
What's that?

Institutes, schools, other departments, and programs create their own web content and menus.

To help you better navigate the site, see here where you are at the moment.

Detail.

1st Gerhart Bruckmann Lecture in Statistics and Data Science

Oct 3rd:

Univ.-Prof. Dr. Tatyana Krivobokova, Institut für Statistik und Operations Research, Universität Wien, Österreich: An extended latent factor framework for ill-posed generalised linear regression

[Translate to Englisch:]
[Translate to Englisch:]

zoom link, opens an external URL in a new window

Meeting-ID: 280 519 2121
Passwort: 584190

Abstract:

The classical latent factor model for (generalised) ill-posed linear regression is extended by assuming that, up to an unknown orthogonal transformation, the features consist of subsets that are relevant and irrelevant to the response. Furthermore, a joint low-dimensionality is imposed only on the relevant features and the response variable. This framework not only allows for a comprehensive study of the partial-least-squares (PLS) algorithm under random design, but also sheds light on the performance of other regularisation methods that exploit sparsity or unsupervised projection. Moreover, we propose a novel iteratively-reweighted-partial-least-squares (IRPLS) algorithm for ill-posed generalised linear models and obtain its convergence rates working in the suggested framework. This is a joint work with Gianluca Finocchio.

Event

Time & date

October 03, 2024

15:30 - 17:00 PM

Add to my calendar

Location

S2 Z74, Science Park 2

Contact

alexandra.stadler@jku.at