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Standard error computations for uncertainty quantification in inverse problems: Asymptotic theory vs. bootstrapping

✍ Scribed by H.T. Banks; Kathleen Holm; Danielle Robbins


Book ID
104046987
Publisher
Elsevier Science
Year
2010
Tongue
English
Weight
409 KB
Volume
52
Category
Article
ISSN
0895-7177

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✦ Synopsis


We computationally investigate two approaches for uncertainty quantification in inverse problems for nonlinear parameter dependent dynamical systems. We compare the bootstrapping and asymptotic theory approaches for problems involving data with several noise forms and levels. We consider both constant variance absolute error data and relative error which produces non-constant variance data in our parameter estimation formulations. We compare and contrast parameter estimates, standard errors, confidence intervals, and computational times for both bootstrapping and asymptotic theory methods.