Parallelizing MCMC with Random Partition Trees

06/10/2015
by   Xiangyu Wang, et al.
0

The modern scale of data has brought new challenges to Bayesian inference. In particular, conventional MCMC algorithms are computationally very expensive for large data sets. A promising approach to solve this problem is embarrassingly parallel MCMC (EP-MCMC), which first partitions the data into multiple subsets and runs independent sampling algorithms on each subset. The subset posterior draws are then aggregated via some combining rules to obtain the final approximation. Existing EP-MCMC algorithms are limited by approximation accuracy and difficulty in resampling. In this article, we propose a new EP-MCMC algorithm PART that solves these problems. The new algorithm applies random partition trees to combine the subset posterior draws, which is distribution-free, easy to resample from and can adapt to multiple scales. We provide theoretical justification and extensive experiments illustrating empirical performance.

READ FULL TEXT
research
12/17/2013

Parallelizing MCMC via Weierstrass Sampler

With the rapidly growing scales of statistical problems, subset based co...
research
11/19/2013

Asymptotically Exact, Embarrassingly Parallel MCMC

Communication costs, resulting from synchronization requirements during ...
research
05/06/2016

Likelihood Inflating Sampling Algorithm

Markov Chain Monte Carlo (MCMC) sampling from a posterior distribution c...
research
11/21/2019

Parallelising MCMC via Random Forests

For Bayesian computation in big data contexts, the divide-and-conquer MC...
research
05/20/2016

Coresets for Scalable Bayesian Logistic Regression

The use of Bayesian methods in large-scale data settings is attractive b...
research
11/18/2015

Tree-Guided MCMC Inference for Normalized Random Measure Mixture Models

Normalized random measures (NRMs) provide a broad class of discrete rand...
research
03/11/2019

Embarrassingly parallel MCMC using deep invertible transformations

While MCMC methods have become a main work-horse for Bayesian inference,...

Please sign up or login with your details

Forgot password? Click here to reset