Publication | Open Access
Estimating ensemble flows on a hidden Markov chain
22
Citations
24
References
2019
Year
Unknown Venue
State EstimationEngineeringEntropyHidden Markov ChainHidden Markov ModelMarkov KernelInteracting Particle SystemProbability TheoryComputer ScienceAggregate Output DataMarkov Chain Monte CarloNew FrameworkEnsemble Flows
We propose a new framework to estimate the evolution of an ensemble of indistinguishable agents on a hidden Markov chain using only aggregate output data. This work can be viewed as an extension of the recent developments in optimal mass transport and Schrödinger bridges to the finite state space hidden Markov chain setting. The flow of the ensemble is estimated by solving a maximum likelihood problem, which has a convex formulation at the infinite-particle limit, and we develop a fast numerical algorithm for it. We illustrate in two numerical examples how this framework can be used to track the flow of identical and indistinguishable dynamical systems.
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