Dynamic Bayesian Learning for Spatiotemporal Mechanistic Models
Authors
Research Topics
Paper Information
-
Journal:
Journal of Machine Learning Research -
Added to Tracker:
Sep 08, 2025
Abstract
We develop an approach for Bayesian learning of spatiotemporal dynamical mechanistic models. Such learning consists of statistical emulation of the mechanistic system that can efficiently interpolate the output of the system from arbitrary inputs. The emulated learner can then be used to train the system from noisy data achieved by melding information from observed data with the emulated mechanistic system. This joint melding of mechanistic systems employ hierarchical state-space models with Gaussian process regression. Assuming the dynamical system is controlled by a finite collection of inputs, Gaussian process regression learns the effect of these parameters through a number of training runs, driving the stochastic innovations of the spatiotemporal state-space component. This enables efficient modeling of the dynamics over space and time. This article details exact inference with analytically accessible posterior distributions in hierarchical matrix-variate Normal and Wishart models in designing the emulator. This step obviates expensive iterative algorithms such as Markov chain Monte Carlo or variational approximations. We also show how emulation is applicable to large-scale emulation by designing a dynamic Bayesian transfer learning framework. Inference on mechanistic model parameters proceeds using Markov chain Monte Carlo as a post-emulation step using the emulator as a regression component. We demonstrate this framework through solving inverse problems arising in the analysis of ordinary and partial nonlinear differential equations and, in addition, to a black-box computer model generating spatiotemporal dynamics across a graphical model.
Author Details
Sudipto Banerjee
AuthorXiang Chen
AuthorIan Frankenburg
AuthorDaniel Zhou
AuthorResearch Topics & Keywords
Bayesian Statistics
Research AreaTime Series
Research AreaCitation Information
APA Format
Sudipto Banerjee
,
Xiang Chen
,
Ian Frankenburg
&
Daniel Zhou
.
Dynamic Bayesian Learning for Spatiotemporal Mechanistic Models.
Journal of Machine Learning Research
.
BibTeX Format
@article{paper509,
title = { Dynamic Bayesian Learning for Spatiotemporal Mechanistic Models },
author = {
Sudipto Banerjee
and Xiang Chen
and Ian Frankenburg
and Daniel Zhou
},
journal = { Journal of Machine Learning Research },
url = { https://www.jmlr.org/papers/v26/22-0896.html }
}