Title of article :
Bayesian validation assessment of multivariate computational models
Author/Authors :
Xiaomo Jiang & Sankaran Mahadevan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
Multivariate model validation is a complex decision-making problem involving comparison
of multiple correlated quantities, based upon the available information and prior knowledge. This paper
presents a Bayesian risk-based decision method for validation assessment of multivariate predictive models
under uncertainty. A generalized likelihood ratio is derived as a quantitative validation metric based
on Bayes’ theorem and Gaussian distribution assumption of errors between validation data and model
prediction. The multivariate model is then assessed based on the comparison of the likelihood ratio with a
Bayesian decision threshold, a function of the decision costs and prior of each hypothesis. The probability
density function of the likelihood ratio is constructed using the statistics of multiple response quantities and
Monte Carlo simulation. The proposed methodology is implemented in the validation of a transient heat
conduction model, using a multivariate data set from experiments. The Bayesian methodology provides a
quantitative approach to facilitate rational decisions in multivariate model assessment under uncertainty
Keywords :
Bayesian statistics , decision making , risk , Reliability , Model validation , multivariate statistics
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS