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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Using regression models to analyze randomized trials: asymptotically valid hypothesis tests despite incorrectly specified models.
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Using regression models to analyze randomized trials: asymptotically valid hypothesis tests despite incorrectly specified models.

机译:使用回归模型分析随机试验:尽管模型指定不正确,但渐近有效的假设检验。

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摘要

Regression models are often used to test for cause-effect relationships from data collected in randomized trials or experiments. This practice has deservedly come under heavy scrutiny, because commonly used models such as linear and logistic regression will often not capture the actual relationships between variables, and incorrectly specified models potentially lead to incorrect conclusions. In this article, we focus on hypothesis tests of whether the treatment given in a randomized trial has any effect on the mean of the primary outcome, within strata of baseline variables such as age, sex, and health status. Our primary concern is ensuring that such hypothesis tests have correct type I error for large samples. Our main result is that for a surprisingly large class of commonly used regression models, standard regression-based hypothesis tests (but using robust variance estimators) are guaranteed to have correct type I error for large samples, even when the models are incorrectly specified. To the best of our knowledge, this robustness of such model-based hypothesis tests to incorrectly specified models was previously unknown for Poisson regression models and for other commonly used models we consider. Our results have practical implications for understanding the reliability of commonly used, model-based tests for analyzing randomized trials.
机译:回归模型通常用于根据随机试验或实验中收集的数据测试因果关系。这种做法理应受到严格的审查,因为常用的模型(例如线性和逻辑回归)通常将无法捕获变量之间的实际关系,并且错误指定的模型可能会导致错误的结论。在本文中,我们集中于假设测试,即在基线变量(例如年龄,性别和健康状况)层次内,随机试验中给予的治疗是否对主要结局均值有任何影响。我们主要关心的是确保对于大样本此类假设检验具有正确的I型错误。我们的主要结果是,对于一大类常用回归模型而言,即使对模型进行了错误指定,基于标准回归的假设检验(但使用稳健的方差估计量)也可以确保对大样本具有正确的I型误差。据我们所知,这种基于模型的假设检验对不正确指定的模型的这种鲁棒性以前对于Poisson回归模型和我们考虑的其他常用模型是未知的。我们的结果对于理解用于分析随机试验的常用基于模型的测试的可靠性具有实际意义。

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