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Pearson-type goodness-of-fit test with bootstrap maximum likelihood estimation

机译:Pearson型拟合良好测试具有启动最大似然估计

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摘要

The Pearson test statistic is constructed by partitioning the data into bins and computing the difference between the observed and expected counts in these bins. If the maximum likelihood estimator (MLE) of the original data is used, the statistic generally does not follow a chi-squared distribution or any explicit distribution. We propose a bootstrap-based modification of the Pearson test statistic to recover the chi-squared distribution. We compute the observed and expected counts in the partitioned bins by using the MLE obtained from a bootstrap sample. This bootstrap-sample MLE adjusts exactly the right amount of randomness to the test statistic, and recovers the chi-squared distribution. The bootstrap chi-squared test is easy to implement, as it only requires fitting exactly the same model to the bootstrap data to obtain the corresponding MLE, and then constructs the bin counts based on the original data. We examine the test size and power of the new model diagnostic procedure using simulation studies and illustrate it with a real data set.
机译:皮尔逊检验统计量是通过将数据划分为多个箱并计算这些箱中观察到的计数与预期计数之间的差来构造的。如果使用原始数据的最大似然估计器(MLE),则统计信息通常不会遵循卡方分布或任何显式分布。我们建议对Pearson检验统计量进行基于引导的修改,以恢复卡方分布。我们使用从引导程序样本获得的MLE来计算分区中的观察值和期望值。该引导样本MLE会根据测试统计信息准确调整正确的随机量,并恢复卡方分布。引导卡方检验易于实现,因为它只需要将完全相同的模型拟合到引导数据即可获得相应的MLE,然后根据原始数据构造bin计数。我们使用仿真研究来检验新模型诊断程序的测试大小和功能,并通过真实的数据集对其进行说明。

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