English

Non-centred Bayesian inference for discrete-valued state-transition models: the Rippler algorithm

Methodology 2026-02-12 v1

Abstract

Stochastic state-transition models of infectious disease transmission can be used to deduce relevant drivers of transmission when fitted to data using statistically principled methods. Fitting this individual-level data requires inference on individuals' unobserved disease statuses over time, which form a high-dimensional and highly correlated state space. We introduce a novel Bayesian (data-augmentation Markov chain Monte Carlo) algorithm for jointly estimating the model parameters and unobserved disease statuses, which we call the Rippler algorithm. This is a non-centred method that can be applied to any individual-based state-transition model. We compare the Rippler algorithm to the state-of-the-art inference methods for individual-based stochastic epidemic models and find that it performs better than these methods as the number of disease states in the model increases.

Keywords

Cite

@article{arxiv.2602.10924,
  title  = {Non-centred Bayesian inference for discrete-valued state-transition models: the Rippler algorithm},
  author = {James Neill and Lloyd A. C. Chapman and Chris Jewell},
  journal= {arXiv preprint arXiv:2602.10924},
  year   = {2026}
}

Comments

18 pages, 7 figures (plus supplementary material with an additional 9 pages, 8 figures)

R2 v1 2026-07-01T10:31:59.988Z