2021
DOI: 10.1016/j.jcp.2020.109716
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Calibrate, emulate, sample

Abstract: Many parameter estimation problems arising in applications are best cast in the framework of Bayesian inversion. This allows not only for an estimate of the parameters, but also for the quantification of uncertainties in the estimates. Often in such problems the parameterto-data map is very expensive to evaluate, and computing derivatives of the map, or derivative-adjoints, may not be feasible. Additionally, in many applications only noisy evaluations of the map may be available. We propose an approach to Baye… Show more

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Cited by 78 publications
(174 citation statements)
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“…Several research areas have addressed the same problem (i.e., AL for regression/emulation) under different names, such as optimal experimental design [59][60][61][62], optimal sensor placements [63,64], generation of quasi-random uniform sequences (Latin Hypercube sampling), Sobol sequences [65,66] and determinantal point processes [67,68], non-uniform, adaptive sampling and quantization of a signal [69,70]. Moreover, adaptive quadrature rules [71,72] and approximations of posterior densities have been introduced [73,74]. Hereby, the notation of AF, explicitly or implicitly defined, is the key point of all these techniques.…”
Section: Active Learning For Emulationmentioning
confidence: 99%
“…Several research areas have addressed the same problem (i.e., AL for regression/emulation) under different names, such as optimal experimental design [59][60][61][62], optimal sensor placements [63,64], generation of quasi-random uniform sequences (Latin Hypercube sampling), Sobol sequences [65,66] and determinantal point processes [67,68], non-uniform, adaptive sampling and quantization of a signal [69,70]. Moreover, adaptive quadrature rules [71,72] and approximations of posterior densities have been introduced [73,74]. Hereby, the notation of AF, explicitly or implicitly defined, is the key point of all these techniques.…”
Section: Active Learning For Emulationmentioning
confidence: 99%
“…The mismatches are indicative of inadequacies in the GCM's convection parameterization, which is unsurprising given the simplicity of the parameterization. The mismatches can be used to systematically improve parameterization schemes, for example, with Bayesian calibration methods (Cleary et al, ; Schneider et al, ).…”
Section: Discussionmentioning
confidence: 99%
“…Such models bring internal sources of uncertainty, and it is not clear to what extent one can trust a surrogate of a full ESM. One potential way to address this additional challenge is the Calibrate, Emulate, and Sample (CES) approach outlined in Cleary et al (2020). There the surrogate model's uncertainty is estimated through the use of Gaussian processes and included as part of a consistent Bayesian calibration procedure.…”
Section: Discussionmentioning
confidence: 99%