2022
DOI: 10.1080/10618600.2022.2093886
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Exact Bayesian Inference for Discretely Observed Markov Jump Processes Using Finite Rate Matrices

Abstract: We present new methodologies for Bayesian inference on the rate parameters of a discretely observed continuous-time Markov jump process with a countably infinite statespace. The usual method of choice for inference, particle Markov chain Monte Carlo (particle MCMC), struggles when the observation noise is small. We consider the most challenging regime of exact observations and provide two new methodologies for inference in this case: the minimal extended statespace algorithm (MESA) and the nearly minimal exten… Show more

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