Parameter estimation for computationally intensive nonlinear regression with an application to climate modeling
Nonlinear regression is a useful statistical tool, relating observed data and a nonlinear function of unknown parameters. When the parameter-dependent nonlinear function is computationally intensive, a straightforward regression analysis by maximum likelihood is not feasible. The method presented in this paper proposes to construct a faster running surrogate for such a computationally intensive nonlinear function, and to use it in a related nonlinear statistical model that accounts for the uncertainty associated with this surrogate. A pivotal quantity in the Earth's climate system is the climate sensitivity: the change in global temperature due to doubling of atmospheric COâ concentrations. This, along with other climate parameters, are estimated by applying the statistical method developed in this paper, where the computationally intensive nonlinear function is the MIT 2D climate model.
document
https://n2t.org/ark:/85065/d7fb54hw
eng
geoscientificInformation
Text
publication
2016-01-01T00:00:00Z
publication
2008-12-01T00:00:00Z
Copyright 2008 Institute of Mathematical Statistics.
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