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Statistical validation of rival models for observable stochastic process and its identification

机译:可观察随机过程的竞争模型的统计验证及其识别

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In this paper, for statistical validation of rival (analytical or simulation) models collected for modeling observable process in stochastic system (say, transportation or service system), a uniformly most powerful invariant (UMPI) test is developed from the generalized maximum likelihood ratio (GMLR). This test can be considered as a result of a new approach to solving the Behrens-Fisher problem when covariance matrices of multivariate normal populations (compared with respect to their means) are different and unknown. The test makes use of an invariant statistic whose distribution, under the null hypothesis, does not depend on the unknown (nuisance) parameters. The sample size and threshold of the UMPI test are determined from minimization of the weighted sum of the model builder's risk and the model user's risk. The rules are proposed to identify an observable process with one of several rival models, suitable for modeling, which accurately represents the process, especially when decisions involving expensive resources are made on the basis of the results of the model. Application examples are given.
机译:在本文中,为了对为建模随机系统(例如运输或服务系统)中的可观察过程而建模的竞争对手(分析或仿真)模型进行统计验证,从广义最大似然比开发了一个统一最有效的不变性(UMPI)检验( GMLR)。当多元正常人群的协方差矩阵(相对于其均值而言)不同且未知时,可以认为该检验是解决贝伦斯-费希尔问题的新方法的结果。该检验利用不变统计量,在原假设下,其分布不依赖于未知(有害)参数。 UMPI测试的样本量和阈值是通过最小化模型构建者风险和模型用户风险的加权总和来确定的。建议使用规则来识别具有适用于建模的多个竞争模型之一的可观察过程,该模型可以准确地表示过程,尤其是在基于模型结果做出涉及昂贵资源的决策时尤其如此。给出了应用示例。

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