Resource-wise and trustworthy Bayesian machine learning

Akronym

WiseBayes

Bidragets beskrivning

Statistical and machine learning approaches that deal very successfully with uncertain data in complex disciplines such as neuroscience, medicine, and artificial intelligence (AI) – known as Bayesian methods – may struggle under additional practical constraints like costly model evaluations and the need to preserve the privacy of data subjects. The WiseBayes consortium project will exploit a unique combination of expertise at the University of Helsinki to produce a new generation of machine learning methods for Bayesian inference which are simultaneously able to take into account resource costs (e.g., time, energy, compute), privacy concerns, and accurate uncertainty quantification. Thanks to this resource-wise and trustworthy approach, the WiseBayes project will promote sustainable machine learning and advance open science with algorithms for data analysis and data sharing that are more widely applicable than before while being respectful of individual data privacy.
Visa mer

Startår

2023

Slutår

2027

Beviljade finansiering

Luigi Acerbi Orcid -palvelun logo
450 954 €


Rollen i Finlands Akademis konsortium

Övriga parter i konsortiet

Partner
Helsingfors universitet (356499)
454 391 €

Finansiär

Finlands Akademi

Typ av finansiering

Akademiprojekt

Övriga uppgifter

Finansieringsbeslutets nummer

356498

Vetenskapsområden

Data- och informationsvetenskap

Forskningsområden

Laskennallinen data-analyysi