2024
DOI: 10.1007/s11222-024-10544-z
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Laplace-based strategies for Bayesian optimal experimental design with nuisance uncertainty

Arved Bartuska,
Luis Espath,
Raúl Tempone

Abstract: Finding the optimal design of experiments in the Bayesian setting typically requires estimation and optimization of the expected information gain functional. This functional consists of one outer and one inner integral, separated by the logarithm function applied to the inner integral. When the mathematical model of the experiment contains uncertainty about the parameters of interest and nuisance uncertainty, (i.e., uncertainty about parameters that affect the model but are not themselves of interest to the ex… Show more

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