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Which Wald statistic? Choosing a parameterization of the Wald statistic to maximize power in k-sample generalized estimating equations

机译:哪个Wald统计信息?选择Wald统计量的参数化以在k样本广义估计方程中最大化功效

摘要

The Wald statistic is known to vary under reparameterization. This raises the question: which parameterization should be chosen, in order to optimize power of the Wald statistic? We specifically consider k-sample tests of generalized linear models and generalized estimating equations in which the alternative hypothesis contains only two parameters. Amongst a general class of parameterizations, we find the parameterization that maximizes power via analysis of the non-centrality parameter, and show how the effect on power of reparameterization depends on sampling design and the differences in variance across samples. There is no single parameterization with optimal power across all alternatives. The Wald statistic commonly used, that under the canonical parameterization, is optimal in some instances but it performs very poorly in others. We demonstrate results by example and by simulation, and describe their implications for likelihood ratio statistics and score statistics. We conclude that due to poor power properties, the routine use of score statistics and Wald statistics under the canonical parameterization for generalized estimating equations is a questionable practice.
机译:已知Wald统计量在重新参数化下会有所不同。这就提出了一个问题:为了优化Wald统计量的功效,应该选择哪个参数化?我们专门考虑广义线性模型和广义估计方程的k样本检验,其中替代假设仅包含两个参数。在一般的参数化类别中,我们通过分析非中心性参数找到使功率最大化的参数化,并说明对重新参数化功率的影响如何取决于样本设计和样本间方差的差异。在所有替代方案中,没有一个具有最佳功能的参数设置。常用的Wald统计量(在规范参数化下)在某些情况下是最佳的,但在其他情况下却表现很差。我们通过示例和仿真来演示结果,并描述它们对似然比统计和得分统计的影响。我们得出结论,由于功率特性较差,在规范化参数化下将分数统计和Wald统计用于常规估计方程的常规使用是值得商practice的做法。

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