TL;DR
This paper introduces an efficient likelihood computation method for discretely observed stochastic compartmental models, enabling accurate Bayesian inference and analysis of infectious disease outbreaks.
Contribution
The authors develop a mathematical foundation and an algorithm for exact likelihood calculation in stochastic compartmental models, improving inference accuracy and computational efficiency.
Findings
Applied method to 17th century plague data, comparing with SMC.
Performed Bayesian inference on Ebola outbreak data, revealing regional infection rate differences.
Demonstrated improved inference accuracy over existing approximation methods.
Abstract
Stochastic compartmental models are important tools for understanding the course of infectious diseases epidemics in populations and in prospective evaluation of intervention policies. However, calculating the likelihood for discretely observed data from even simple models -- such as the ubiquitous susceptible-infectious-removed (SIR) model -- has been considered computationally intractable, since its formulation almost a century ago. Recently researchers have proposed methods to circumvent this limitation through data augmentation or approximation, but these approaches often suffer from high computational cost or loss of accuracy. We develop the mathematical foundation and an efficient algorithm to compute the likelihood for discretely observed data from a broad class of stochastic compartmental models. We also give expressions for the derivatives of the transition probabilities using…
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