2007
DOI: 10.2172/1028962
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Computationally efficient Bayesian inference for inverse problems.

Abstract: Bayesian statistics provides a foundation for inference from noisy and incomplete data, a natural mechanism for regularization in the form of prior information, and a quantitative assessment of uncertainty in the inferred results. Inverse problemsrepresenting indirect estimation of model parameters, inputs, or structural componentscan be fruitfully cast in this framework. Complex and computationally intensive forward models arising in physical applications, however, can render a Bayesian approach prohibitive. … Show more

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