A Bayesian metamodeling approach for stochastic simulations

Winter Simulation Conference(2010)

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摘要
In the application of kriging model in the field of simulation, the parameters of the model are likely to be estimated from the simulated data. This introduces parameter estimation uncertainties into the overall prediction error, and this uncertainty can be further aggravated by random noise in the stochastic simulation. In this paper, a Bayesian metamodeling approach for kriging prediction is proposed for stochastic simulations to more appropriately account for the parameter uncertainties. The approach is first illustrated analytically using a simplified two point example. A more general Markov Chain Monte Carlo analysis approach is subsequently proposed to handle more general assumptions on the parameters and design. The general MCMC approach is compared with the modified nugget effect kriging model based on the M/M/1 simulation system. Initial results indicate that the Bayesian approach has better coverage and closer predictive variance to the empirical value than the modified nugget effect kriging model, especially in the cases where the stochastic variability is high.
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关键词
modified nugget effect kriging model,general mcmc approach,stochastic processes,modified nugget effect,stochastic simulation,parameter estimation uncertainty,bayesian metamodeling approach,parameter estimation,bayes methods,statistical analysis,m/m/1 simulation system,simulated data,predictive variance,bayesian approach,carlo analysis approach,random noise,stochastic variability,prediction error,monte carlo methods,kriging model,mcmc approach,markov chain monte carlo analysis approach,markov processes,general markov chain monte,general assumption,kriging prediction,markov chain monte carlo,correlation,uncertainty,bayesian methods,computational modeling
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