Inference and approximation under misspecification

Bidragets beskrivning

Statistical inference provides both predictions and quantification of uncertainty, typically expressed in terms of confidence or credible intervals that are expected to contain the quantity of interest, such as the support of a political party, "with high probability". We study how prior assumptions encoded in a Gaussian process model affect the reliability of uncertainty quantification in Bayesian statistical inference. For example, if one assumes that the truth is much smoother (i.e., that observations at two nearby sensor locations are quite similar) than it really is, the model may end up becoming overconfident: The credible intervals are much narrower than they should be and unlikely to contain the truth. Overconfidence may have serious repercussions in subsequent decision-making. In this project we will develop both a mathematical theory for the reliability of Gaussian process models under misspecification and new computational methods that work even if the model is misspecified.
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Startår

2025

Slutår

2029

Beviljade finansiering

Finansiär

Finlands Akademi

Typ av finansiering

Akademiforskare

Beslutfattare

Forskningsrådet för naturvetenskap och teknik
12.06.2025

Övriga uppgifter

Finansieringsbeslutets nummer

368086

Vetenskapsområden

Matematik

Forskningsområden

Sovellettu matematiikka