LazyDINO: Fast, scalable, and efficiently amortized Bayesian inversion via structure-exploiting and surrogate-driven measure transport
Lianghao Cao, Joshua Chen, Michael Brennan, Thomas O'Leary-Roseberry,, Youssef Marzouk, Omar Ghattas

TL;DR
LazyDINO introduces a neural surrogate-based transport map method for high-dimensional Bayesian inverse problems, achieving fast, scalable, and cost-efficient posterior inference with significant offline cost reduction.
Contribution
It develops a derivative-informed neural surrogate and a lazy map variational inference framework for efficient amortized Bayesian inversion in complex inverse problems.
Findings
Achieves 10-100x reduction in offline cost compared to traditional methods.
Outperforms Laplace approximation with fewer than 1000 offline samples.
Demonstrates high efficiency and robustness in high-dimensional Bayesian inverse problems.
Abstract
We present LazyDINO, a transport map variational inference method for fast, scalable, and efficiently amortized solutions of high-dimensional nonlinear Bayesian inverse problems with expensive parameter-to-observable (PtO) maps. Our method consists of an offline phase in which we construct a derivative-informed neural surrogate of the PtO map using joint samples of the PtO map and its Jacobian. During the online phase, when given observational data, we seek rapid posterior approximation using surrogate-driven training of a lazy map [Brennan et al., NeurIPS, (2020)], i.e., a structure-exploiting transport map with low-dimensional nonlinearity. The trained lazy map then produces approximate posterior samples or density evaluations. Our surrogate construction is optimized for amortized Bayesian inversion using lazy map variational inference. We show that (i) the derivative-based reduced…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Domain Adaptation and Few-Shot Learning · Seismic Imaging and Inversion Techniques
MethodsVariational Inference
