On polynomial-time computation of high-dimensional posterior measures by Langevin-type algorithms

09/11/2020
by   Richard Nickl, et al.
0

The problem of generating random samples of high-dimensional posterior distributions is considered. The main results consist of non-asymptotic computational guarantees for Langevin-type MCMC algorithms which scale polynomially in key quantities such as the dimension of the model, the desired precision level, and the number of available statistical measurements. As a direct consequence, it is shown that posterior mean vectors as well as optimisation based maximum a posteriori (MAP) estimates are computable in polynomial time, with high probability under the distribution of the data. These results are complemented by statistical guarantees for recovery of the ground truth parameter generating the data. Our results are derived in a general high-dimensional non-linear regression setting (with Gaussian process priors) where posterior measures are not necessarily log-concave, employing a set of local `geometric' assumptions on the parameter space, and assuming that a good initialiser of the algorithm is available. The theory is applied to a representative non-linear example from PDEs involving a steady-state Schrödinger equation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/28/2022

Polynomial time guarantees for sampling based posterior inference in high-dimensional generalised linear models

The problem of computing posterior functionals in general high-dimension...
research
09/05/2022

On free energy barriers in Gaussian priors and failure of MCMC for high-dimensional unimodal distributions

We exhibit examples of high-dimensional unimodal posterior distributions...
research
05/17/2021

On log-concave approximations of high-dimensional posterior measures and stability properties in non-linear inverse problems

The problem of efficiently generating random samples from high-dimension...
research
03/27/2018

Regularization and Computation with high-dimensional spike-and-slab posterior distributions

We consider the Bayesian analysis of a high-dimensional statistical mode...
research
07/14/2021

Performance of Bayesian linear regression in a model with mismatch

For a model of high-dimensional linear regression with random design, we...
research
02/25/2020

Bayesian Poroelastic Aquifer Characterization from InSAR Surface Deformation Data. Part I: Maximum A Posteriori Estimate

Characterizing the properties of groundwater aquifers is essential for p...
research
04/25/2021

Variational Inference in high-dimensional linear regression

We study high-dimensional Bayesian linear regression with product priors...

Please sign up or login with your details

Forgot password? Click here to reset