SOTAVerified

Unbiased Bayesian Inference for Population Markov Jump Processes via Random Truncations

2015-09-28Code Available0· sign in to hype

Anastasis Georgoulas, Jane Hillston, Guido Sanguinetti

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We consider continuous time Markovian processes where populations of individual agents interact stochastically according to kinetic rules. Despite the increasing prominence of such models in fields ranging from biology to smart cities, Bayesian inference for such systems remains challenging, as these are continuous time, discrete state systems with potentially infinite state-space. Here we propose a novel efficient algorithm for joint state / parameter posterior sampling in population Markov Jump processes. We introduce a class of pseudo-marginal sampling algorithms based on a random truncation method which enables a principled treatment of infinite state spaces. Extensive evaluation on a number of benchmark models shows that this approach achieves considerable savings compared to state of the art methods, retaining accuracy and fast convergence. We also present results on a synthetic biology data set showing the potential for practical usefulness of our work.

Tasks

Reproductions