2015
DOI: 10.2172/1260883
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Reduced Order Model Implementation in the Risk-Informed Safety Margin Characterization Toolkit

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Cited by 4 publications
(5 citation statements)
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“…Many methods provide point wise, local sensitivity, which is more amenable to drill-down tasks such as optimization rather than the summarized information we seek to provide. Such methods can either not provide enough information when the visualization is focused around a particular location [5,8,54] or create unnecessary clutter when trying to extract trends in the data [13,14,30].…”
Section: Partition-based Regression Methodsmentioning
confidence: 99%
See 3 more Smart Citations
“…Many methods provide point wise, local sensitivity, which is more amenable to drill-down tasks such as optimization rather than the summarized information we seek to provide. Such methods can either not provide enough information when the visualization is focused around a particular location [5,8,54] or create unnecessary clutter when trying to extract trends in the data [13,14,30].…”
Section: Partition-based Regression Methodsmentioning
confidence: 99%
“…HyperMoVal [54] allows users to visually validate and explore a model built using support vector regression (SVR) [58] against real data in order to identify and understand regions of poor fitting. Berger et al [5] focus instead on local optimization by providing local sensitivity information on and around a focal point in a focus+context visualization. Vismon [8] uses sensitivity information to perform trade-off analysis.…”
Section: Partition-based Regression Methodsmentioning
confidence: 99%
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“…The HybridModel is designed to combine multiple surrogate models and any other Model (i.e. high-fidelity model) leveraging the EnsembleModel infrastructure developed in FY15 [ 9 ] and improvement last year [10], deciding which of the Model needs to be evaluated based on the model validation score.…”
Section: Automatic Selection Of High-fidelity and Surrogate Models: Hmentioning
confidence: 99%