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Risk analysis / Bayesian statistics / DAKOTA / Uncertainty / Quantification of margins and uncertainties / Polynomial chaos / Imprecise probability / Surrogate model / Confidence interval / Statistics / Measurement / Probability box
Date: 2011-06-23 14:21:04
Risk analysis
Bayesian statistics
DAKOTA
Uncertainty
Quantification of margins and uncertainties
Polynomial chaos
Imprecise probability
Surrogate model
Confidence interval
Statistics
Measurement
Probability box

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