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Continuum Limit of Posteriors in Graph Bayesian Inverse Problems

22 June 2017
Nicolas García Trillos
D. Sanz-Alonso
ArXiv (abs)PDFHTML
Abstract

We consider the problem of recovering a function input of a differential equation formulated on an unknown domain MMM. We assume to have access to a discrete domain Mn={x1,…,xn}⊂MM_n=\{x_1, \dots, x_n\} \subset MMn​={x1​,…,xn​}⊂M, and to noisy measurements of the output solution at p≤np\le np≤n of those points. We introduce a graph-based Bayesian inverse problem, and show that the graph-posterior measures over functions in MnM_nMn​ converge, in the large nnn limit, to a posterior over functions in MMM that solves a Bayesian inverse problem with known domain. The proofs rely on the variational formulation of the Bayesian update, and on a new topology for the study of convergence of measures over functions on point clouds to a measure over functions on the continuum. Our framework, techniques, and results may serve to lay the foundations of robust uncertainty quantification of graph-based tasks in machine learning. The ideas are presented in the concrete setting of recovering the initial condition of the heat equation on an unknown manifold.

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