2023
DOI: 10.1371/journal.pone.0291151
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Combining formal methods and Bayesian approach for inferring discrete-state stochastic models from steady-state data

Julia Klein,
Huy Phung,
Matej Hajnal
et al.

Abstract: Stochastic population models are widely used to model phenomena in different areas such as cyber-physical systems, chemical kinetics, collective animal behaviour, and beyond. Quantitative analysis of stochastic population models easily becomes challenging due to the combinatorial number of possible states of the population. Moreover, while the modeller easily hypothesises the mechanistic aspects of the model, the quantitative parameters associated to these mechanistic transitions are difficult or impossible to… Show more

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