Multifidelity multilevel Monte Carlo to accelerate approximate Bayesian parameter inference for partially observed stochastic processes
Models of stochastic processes are widely used in almost all fields of science. Theory validation, parameter estimation, and prediction all require model calibration and statistical inference using data. However, data are almost always incomplete observations of reality. This leads to a great challe...
Main Authors: | Warne, D, Prescott, TP, Baker, R, Simpson, MJ |
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Format: | Journal article |
Language: | English |
Published: |
Elsevier
2022
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