Matrix nearness problems via Riemannian optimization

Description of the granted funding

How can we find the "best" matrix for a given task while meeting certain requirements? This question comes up in areas like engineering, finance, and statistics. For example, engineers might need to adjust a model to make a system stable, or financial analysts might need to estimate missing data in a correlation matrix. These challenges, called "matrix nearness problems", involve finding a matrix that is as close as possible to a starting one while obeying specific rules. Instead of relying on traditional methods, our project tackles these problems using a novel approach. We break the problem into two steps, one that can be solved exactly and one that involves optimising a function over a geometric structure. By combining cutting-edge mathematical techniques with efficient algorithms, we will solve matrix nearness problems faster and more accurately than ever before.
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Starting year

2025

End year

2029

Granted funding

Vanni Noferini Orcid -palvelun logo
599 999 €

Funder

Research Council of Finland

Funding instrument

Academy projects

Decision maker

Scientific Council for Natural Sciences and Engineering
12.06.2025

Other information

Funding decision number

370932

Fields of science

Mathematics

Research fields

Sovellettu matematiikka