Use of BayesSim and Smoothing to Enhance Simulation Studies  

Use of BayesSim and Smoothing to Enhance Simulation Studies

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作  者:Jeffrey D. Hart 

机构地区:[1]Department of Statistics, Texas A&M University, College Station, TX, USA

出  处:《Open Journal of Statistics》2017年第1期153-172,共20页统计学期刊(英文)

摘  要:The conventional form of statistical simulation proceeds by selecting a few models and generating hundreds or thousands of data sets from each model. This article investigates a different approach, called BayesSim, that generates hundreds or thousands of models from a prior distribution, but only one (or a few) data sets from each model. Suppose that the performance of estimators in a parametric model is of interest. Smoothing methods can be applied to BayesSim output to investigate how estimation error varies as a function of the parameters. In this way inferences about the relative merits of the estimators can be made over essentially the entire parameter space, as opposed to a few parameter configurations as in the conventional approach. Two examples illustrate the methodology: One involving the skew-normal distribution and the other nonparametric goodness-of-fit tests.The conventional form of statistical simulation proceeds by selecting a few models and generating hundreds or thousands of data sets from each model. This article investigates a different approach, called BayesSim, that generates hundreds or thousands of models from a prior distribution, but only one (or a few) data sets from each model. Suppose that the performance of estimators in a parametric model is of interest. Smoothing methods can be applied to BayesSim output to investigate how estimation error varies as a function of the parameters. In this way inferences about the relative merits of the estimators can be made over essentially the entire parameter space, as opposed to a few parameter configurations as in the conventional approach. Two examples illustrate the methodology: One involving the skew-normal distribution and the other nonparametric goodness-of-fit tests.

关 键 词:Loss Function BAYES Risk Prior DISTRIBUTION Regression SIMULATION SKEW-NORMAL DISTRIBUTION GOODNESS of Fit 

分 类 号:O1[理学—数学]

 

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