Markov Chain Monte Carlo Based on Deterministic Transformations
Somak Dutta, Sourabh Bhattacharya

TL;DR
This paper introduces TMCMC, a new MCMC method using deterministic transformations that efficiently samples high-dimensional distributions with high acceptance rates and significant computational savings.
Contribution
The paper proposes TMCMC, a novel deterministic transformation-based MCMC method that guarantees convergence and improves efficiency over traditional methods like MH.
Findings
TMCMC achieves high acceptance rates in high-dimensional sampling.
TMCMC demonstrates computational savings in complex geostatistical models.
TMCMC effectively handles highly correlated variables in posterior sampling.
Abstract
In this article we propose a novel MCMC method based on deterministic transformations T: X x D --> X where X is the state-space and D is some set which may or may not be a subset of X. We refer to our new methodology as Transformation-based Markov chain Monte Carlo (TMCMC). One of the remarkable advantages of our proposal is that even if the underlying target distribution is very high-dimensional, deterministic transformation of a one-dimensional random variable is sufficient to generate an appropriate Markov chain that is guaranteed to converge to the high-dimensional target distribution. Apart from clearly leading to massive computational savings, this idea of deterministically transforming a single random variable very generally leads to excellent acceptance rates, even though all the random variables associated with the high-dimensional target distribution are updated in a single…
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