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Identifiability of stochastically modelled reaction networks SCIE SCOPUS

Title
Identifiability of stochastically modelled reaction networks
Authors
ENCISO, GERMANERBAN, RADEKKIM, JINSU
Date Issued
2021-10
Publisher
Cambridge University Press
Abstract
Chemical reaction networks describe interactions between biochemical species. Once an underlying reaction network is given for a biochemical system, the system dynamics can be modelled with various mathematical frameworks such as continuous-time Markov processes. In this manuscript, the identifiability of the underlying network structure with a given stochastic system dynamics is studied. It is shown that some data types related to the associated stochastic dynamics can uniquely identify the underlying network structure as well as the system parameters. The accuracy of the presented network inference is investigated when given dynamical data are obtained via stochastic simulations.
URI
https://oasis.postech.ac.kr/handle/2014.oak/110543
DOI
10.1017/s0956792520000492
ISSN
0956-7925
Article Type
Article
Citation
European Journal of Applied Mathematics, vol. 32, no. 5, page. 865 - 887, 2021-10
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