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Goodness-of-fit Tests When Parameters are Estimated

机译:估计参数时的拟合优度检验

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摘要

Several nonparametric goodness-of-fit tests are based on the empirical distribution function. In the presence of nuisance parameters, the tests arc generally constructed by first estimating these nuisance parameters. In such a case, it is well known that critical values shift, and the asymptotic null distribution of the test statistic may depend in a complex way on the unknown parameters. In this paper we use bootstrap methods to estimate the null distribution. We shall consider both parametric and nonparametric bootstrap methods. We shall first demonstrate that, under very general conditions, the process obtained by subtracting the population distribution function with estimated parameters from the empirical distribution has the same weak limit as the corresponding bootstrap version. Of course in the nonparametric bootstrap case a bias correction is needed. This result is used to show that the bootstrap method consistently estimates the null distributions of various goodness-of-fit tests. These results hold not only in the univariate case but also in the multivariate setting.
机译:几种非参数拟合优度检验均基于经验分布函数。在存在干扰参数的情况下,通常通过首先估计这些干扰参数来构建测试。在这种情况下,众所周知,临界值会发生变化,并且测试统计量的渐近零分布可能会以复杂的方式取决于未知参数。在本文中,我们使用自举方法来估计零分布。我们将同时考虑参数和非参数引导方法。我们将首先证明,在非常普遍的条件下,通过从经验分布中减去带有估计参数的总体分布函数而获得的过程与相应的引导程序版本具有相同的弱极限。当然,在非参数自举情况下,需要进行偏差校正。该结果用于表明,引导程序方法始终如一地估计各种拟合优度测试的零分布。这些结果不仅适用于单变量情况,而且适用于多变量设置。

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