Sequential infinite-dimensional Bayesian optimal experimental design with derivative-informed latent attention neural operator

Jinwoo Go, Peng Chen
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Abstract

In this work, we develop a new computational framework to solve sequential Bayesian experimental design (SBOED) problems constrained by large-scale partial differential equations with infinite-dimensional random parameters. We propose an adaptive terminal formulation of the optimality criteria for SBOED to achieve adaptive global optimality. We also establish an equivalent optimization formulation to achieve computational simplicity enabled by Laplace and low-rank approximations of the posterior. To accelerate the solution of the SBOED problem, we develop a derivative-informed latent attention neural operator (LANO), a new neural network surrogate model that leverages (1) derivative-informed dimension reduction for latent encoding, (2) an attention mechanism to capture the dynamics in the latent space, (3) an efficient training in the latent space augmented by projected Jacobian, which collectively lead to an efficient, accurate, and scalable surrogate in computing not only the parameter-to-observable (PtO) maps but also their Jacobians. We further develop the formulation for the computation of the MAP points, the eigenpairs, and the sampling from posterior by LANO in the reduced spaces and use these computations to solve the SBOED problem. We demonstrate the superior accuracy of LANO compared to two other neural architectures and the high accuracy of LANO compared to the finite element method (FEM) for the computation of MAP points in solving the SBOED problem with application to the experimental design of the time to take MRI images in monitoring tumor growth.
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使用导数信息潜注意神经算子的序列无限维贝叶斯优化实验设计
在这项工作中,我们开发了一种新的计算框架,用于解决受无限维随机参数大尺度局部微分方程约束的序列贝叶斯实验设计(SBOED)问题。我们为 SBOED 的最优性准则提出了一种自适应终端表述,以实现自适应全局最优性。我们还建立了一个等效优化公式,通过对后验的拉普拉斯和低秩近似来实现计算的简便性。为了加速解决SBOED问题,我们开发了一种导数信息潜注意神经操作器(LANO),这是一种新的神经网络代理模型,它利用(1)导数信息降维进行潜编码、(2) 一种捕捉潜空间动态的注意力机制,(3) 一种由投影雅各比增强的潜空间高效训练,这些因素共同导致了一种高效、准确和可扩展的代理模型,不仅能计算参数到可观测(PtO)映射,还能计算它们的雅各比。我们进一步开发了计算 MAP 点、特征对的公式,以及在还原空间中通过 LANO 从后向采样的公式,并利用这些计算来解决 SBOED 问题。我们证明了在解决 SBOED 问题时,与其他两种神经架构相比,LANO 具有更高的准确性;在计算 MAP 点时,与有限元法 (FEM) 相比,LANO 具有更高的准确性。
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