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Polynomial regression approaches using derivative information for uncertainty quantification
Oleg Roderick
, Mihai Anitescu
,
Paul Fischer
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peer-review
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Keyphrases
Polynomial Regression
100%
Uncertainty Quantification
100%
Regression Approach
100%
Derivative Information
100%
Surrogate Model
50%
Steady State
25%
Computationally Efficient
25%
Simplified Model
25%
Mathematical Model
25%
Best Model
25%
Stochastic Parameters
25%
State Description
25%
Fuel pin
25%
Nuclear Reactor Core
25%
Goal-oriented
25%
Heat Distribution
25%
Control Variates
25%
Centerline Temperature
25%
Polynomial Space
25%
Sample Variance
25%
Mathematics
Uncertainty Quantification
100%
Polynomial Regression
100%
Polynomial
50%
Stochastics
50%
Mathematical Modeling
50%
Linear Models
50%
Sample Variance
50%
Sample Point
50%
Control Variate
50%
Computer Science
Polynomial Regression
100%
State Description
50%
Sample Variance
50%