An Efficient Parallel Simulation Method for Posterior Inference on Paths of Markov Processes
DOI:
https://doi.org/10.24352/UB.OVGU-2018-526Schlagworte:
Bayesian inference, Markov Chain Monte Carlo, Posterior path simulationAbstract
In this note, we propose a method for efficient simulation of paths of latent Markovian state processes in a Markov Chain Monte Carlo setting. Our method harnesses available parallel computing power by breaking the sequential nature of commonly encountered state simulation routines. We offer a worked example that highlights the computational merits of our approach.