Author:
Jasra Ajay,Law Kody J. H.,Walton Neil,Yang Shangda
Abstract
AbstractWe consider the problem of estimating expectations with respect to a target distribution with an unknown normalising constant, and where even the un-normalised target needs to be approximated at finite resolution. This setting is ubiquitous across science and engineering applications, for example in the context of Bayesian inference where a physics-based model governed by an intractable partial differential equation (PDE) appears in the likelihood. A multi-index sequential Monte Carlo (MISMC) method is used to construct ratio estimators which provably enjoy the complexity improvements of multi-index Monte Carlo (MIMC) as well as the efficiency of sequential Monte Carlo (SMC) for inference. In particular, the proposed method provably achieves the canonical complexity of $$\hbox {MSE}^{-1}$$
MSE
-
1
, while single-level methods require $$\hbox {MSE}^{-\xi }$$
MSE
-
ξ
for $$\xi >1$$
ξ
>
1
. This is illustrated on examples of Bayesian inverse problems with an elliptic PDE forward model in 1 and 2 spatial dimensions, where $$\xi =5/4$$
ξ
=
5
/
4
and $$\xi =3/2$$
ξ
=
3
/
2
, respectively. It is also illustrated on more challenging log-Gaussian process models, where single-level complexity is approximately $$\xi =9/4$$
ξ
=
9
/
4
and multilevel Monte Carlo (or MIMC with an inappropriate index set) gives $$\xi = 5/4 + \omega $$
ξ
=
5
/
4
+
ω
, for any $$\omega > 0$$
ω
>
0
, whereas our method is again canonical. We also provide novel theoretical verification of the product-form convergence results which MIMC requires for Gaussian processes built in spaces of mixed regularity defined in the spectral domain, which facilitates acceleration with fast Fourier transform methods via a cumulant embedding strategy, and may be of independent interest in the context of spatial statistics and machine learning.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computational Theory and Mathematics,Computational Mathematics,Analysis