Distributed Computation for Marginal Likelihood based Model Choice

10/10/2019
by   Alexander Buchholz, et al.
0

We propose a general method for distributed Bayesian model choice, using the marginal likelihood, where each worker has access only to non-overlapping subsets of the data. Our approach approximates the model evidence for the full data set through Monte Carlo sampling from the posterior on every subset generating a model evidence per subset. The model evidences per worker are then consistently combined using a novel approach which corrects for the splitting using summary statistics of the generated samples. This divide-and-conquer approach allows Bayesian model choice in the large data setting, exploiting all available information but limiting communication between workers. Our work thereby complements the work on consensus Monte Carlo (Scott et al., 2016) by explicitly enabling model choice. In addition, we show how the suggested approach can be extended to model choice within a reversible jump setting that explores multiple feature combinations within one run.

READ FULL TEXT
research
10/10/2019

Distributed Bayesian Computation for Model Choice

We propose a general method for distributed Bayesian model choice, where...
research
12/23/2019

Multilevel Monte Carlo estimation of log marginal likelihood

In this short note we provide an unbiased multilevel Monte Carlo estimat...
research
05/20/2019

Stratified sampling and resampling for approximate Bayesian computation

Approximate Bayesian computation (ABC) is computationally intensive for ...
research
12/17/2021

Coded Consensus Monte Carlo: Robust One-Shot Distributed Bayesian Learning with Stragglers

This letter studies distributed Bayesian learning in a setting encompass...
research
11/07/2017

Bayesian Inference of Selection in the Wright-Fisher Diffusion Model

The increasing availability of population-level allele frequency data ac...
research
07/24/2018

Global consensus Monte Carlo

For Bayesian inference with large data sets, it is often convenient or n...
research
03/26/2015

Likelihood-free Model Choice

This document is an invited chapter covering the specificities of ABC mo...

Please sign up or login with your details

Forgot password? Click here to reset