Wasserstein Gradient Flows for Batch Bayesian Optimal Experimental Design
Louis Sharrock

TL;DR
This paper introduces a novel Wasserstein gradient flow approach for batch Bayesian optimal experimental design, enabling scalable and effective optimization of high-dimensional, non-convex utility functions.
Contribution
It proposes a probabilistic lifting of the BOED problem to the space of probability measures and develops Wasserstein gradient flow algorithms for scalable batch design optimization.
Findings
Effective exploration of multimodal landscapes.
High-utility batch selection demonstrated in experiments.
Scalable algorithms with particle-based and Monte Carlo methods.
Abstract
Bayesian optimal experimental design (BOED) provides a powerful, decision-theoretic framework for selecting experiments so as to maximise the expected utility of the data to be collected. In practice, however, its applicability can be limited by the difficulty of optimising the chosen utility. The expected information gain (EIG), for example, is often high-dimensional and strongly non-convex. This challenge is particularly acute in the batch setting, where multiple experiments are to be designed simultaneously. In this paper, we introduce a new approach to batch EIG-based BOED via a probabilistic lifting of the original optimisation problem to the space of probability measures. In particular, we propose to optimise an entropic regularisation of the expected utility over the space of design measures. Under mild conditions, we show that this objective admits a unique minimiser, which can…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Optimal Experimental Design Methods · Probabilistic and Robust Engineering Design
