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Goodness-of-fit tests for semiparametric and parametric hypotheses based on the probability weighted empirical characteristic function

机译:基于概率加权经验特征函数的半参数和参数假设的拟合优度检验

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摘要

We investigate the finite-sample properties of certain procedures which employ the novel notion of the probability weighted empirical characteristic function. The procedures considered are: (1) Testing for symmetry in regression, (2) Testing for multivariate normality with independent observations, and (3) Testing for multivariate normality of random effects in mixed models. Along with the new tests alternative methods based on the ordinary empirical characteristic function as well as other more well known procedures are implemented for the purpose of comparison.
机译:我们研究某些程序的有限样本属性,这些程序采用了概率加权经验特征函数的新颖概念。所考虑的过程包括:(1)检验回归中的对称性;(2)使用独立观察值检验多元正态性;(3)在混合模型中检验随机效应的多元正态性。为了进行比较,除了新的测试外,还采用了基于普通经验特性函数的替代方法以及其他更广为人知的程序。

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