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Evaluating Statistical Hypotheses Using Weakly-Identifiable Estimating Functions

机译:使用弱可识别的估计函数评估统计假设

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摘要

Many statistical models arising in applications contain non- and weakly-identified parameters. Due to identifiability concerns, tests concerning the parameters of interest may not be able to use conventional theories and it may not be clear how to assess statistical significance. This paper extends the literature by developing a testing procedure that can be used to evaluate hypotheses under non- and weakly-identifiable semiparametric models. The test statistic is constructed from a general estimating function of a finite dimensional parameter model representing the population characteristics of interest, but other characteristics which may be described by infinite dimensional parameters, and viewed as nuisance, are left completely unspecified. We derive the limiting distribution of this statistic and propose theoretically justified resampling approaches to approximate its asymptotic distribution. The methodology's practical utility is illustrated in simulations and an analysis of quality-of-life outcomes from a longitudinal study on breast cancer.
机译:应用程序中出现的许多统计模型都包含不确定的参数和弱识别的参数。由于可识别性的考虑,有关目标参数的测试可能无法使用常规理论,并且不清楚如何评估统计显着性。本文通过开发一种测试程序扩展了文献,该测试程序可用于在不可识别的和弱可识别的半参数模型下评估假设。测试统计数据是由代表感兴趣的种群特征的有限维参数模型的一般估计函数构造而成的,但其他特征(可能由无限维参数描述并被视为令人讨厌的特征)则完全未指定。我们得出该统计量的极限分布,并提出理论上合理的重采样方法以近似其渐近分布。通过对乳腺癌的纵向研究进行的模拟和对生活质量结果的分析说明了该方法的实际实用性。

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