Differentiated uniformization: A new method for inferring Markov chains on combinatorial state spaces including stochastic epidemic models
Kevin Rupp, Rudolf Schill, Jonas S\"uskind, Peter Georg, Maren Klever,, Andreas L\"osch, Lars Grasedyck, Tilo Wettig, Rainer Spang

TL;DR
This paper introduces a differentiated uniformization method for efficiently computing derivatives of matrix exponentials in large Markov chains, demonstrated on epidemic models like COVID-19 in Austria.
Contribution
It develops an algorithm for derivatives of matrix exponentials in Markov chains with tensor product structure, enabling scalable inference in complex stochastic models.
Findings
Successfully applied to the stochastic SIR epidemic model
Estimated COVID-19 infection and recovery rates in Austria
Quantified uncertainty in Bayesian framework
Abstract
Motivation: We consider continuous-time Markov chains that describe the stochastic evolution of a dynamical system by a transition-rate matrix which depends on a parameter . Computing the probability distribution over states at time requires the matrix exponential , and inferring from data requires its derivative . Both are challenging to compute when the state space and hence the size of is huge. This can happen when the state space consists of all combinations of the values of several interacting discrete variables. Often it is even impossible to store . However, when can be written as a sum of tensor products, computing becomes feasible by the uniformization method, which does not require explicit storage of . Results: Here we provide an analogous algorithm for computing…
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