2024
DOI: 10.1609/aaai.v38i18.30012
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On Estimating the Gradient of the Expected Information Gain in Bayesian Experimental Design

Ziqiao Ao,
Jinglai Li

Abstract: Bayesian Experimental Design (BED), which aims to find the optimal experimental conditions for Bayesian inference, is usually posed as to optimize the expected information gain (EIG). The gradient information is often needed for efficient EIG optimization, and as a result the ability to estimate the gradient of EIG is essential for BED problems. The primary goal of this work is to develop methods for estimating the gradient of EIG, which, combined with the stochastic gradient descent algorithms, result in eff… Show more

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