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FORMALIZED DATA SNOOPING BASED ON GENERALIZED ERROR RATES

机译:基于广义错误率的规范化数据监听

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摘要

It is common in econometric applications that several hypothesis tests are carried out simultaneously.The problem then becomes how to decide which hypotheses to reject,accounting for the multitude of tests.The classical approach is to control the familywise error rate(FWE),which is the probability of one or more false rejections.But when the number of hypotheses under consideration is large,control of the FWE can become too demanding.As a result,the number of false hypotheses rejected may be small or even zero.This suggests replacing control of the FWE by a more liberal measure.To this end,we review a number of recent proposals from the statistical literature.We briefly discuss how these procedures apply to the general problem of model selection.A simulation study and two empirical applications illustrate the methods.
机译:在计量经济学应用中,通常同​​时进行多个假设检验。然后,问题就变成了如何决定要拒绝哪些假设,如何应对众多检验。经典方法是控制家庭错误率(FWE),即一个或多个错误拒绝的概率。但是,当考虑的假设数量很大时,对FWE的控制可能变得过于苛刻。结果,被拒绝的错误假设的数量可能很小甚至为零。这建议替换控制为此,我们回顾了统计文献中的一些最新建议。我们简要讨论了这些程序如何应用于模型选择的一般问题。仿真研究和两个经验应用说明了方法。

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