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The Effect of Latent Binary Variables on the Uncertainty of the Prediction of a Dichotomous Outcome Using Logistic Regression Based Propensity Score Matching

机译:基于逻辑回归基于倾向匹配的逻辑回归倾向匹配对二分结节预测的不确定性的影响

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Logistic regression based propensity score matching is a widely used method in case-control studies to select the individuals of the control group. This method creates a suitable control group if all factors affecting the output variable are known. However, if relevant latent variables exist as well, which are not taken into account during the calculations, the quality of the control group is uncertain, In this paper, we present a statistics-based research in which we try to determine the relationship between the accuracy of the logistic regression model and the uncertainty of the dependent variable of the control group defined by propensity score matching. Our analyses show that there is a linear correlation between the fit of the logistic regression model and the uncertainty of the output variable. In certain cases, a latent binary explanatory variable can result in a relative error of up to 70% in the prediction of the outcome variable. The observed phenomenon calls the attention of analysts to an important point, which must be taken into account when deducting conclusions.
机译:基于物流回归的倾向得分匹配是一种广泛使用的方法,用于控制对照组的个体。如果已知影响输出变量的所有因素是已知的,则此方法创建合适的控制组。但是,如果同样存在相关的潜在变量,则在计算过程中没有考虑到这一点,对照组的质量是不确定的,本文展示了基于统计的研究,我们试图确定的基于统计研究逻辑回归模型的准确性和倾向分数匹配定义的对照组的依赖变量的不确定性。我们的分析表明,Logistic回归模型的拟合与输出变量的不确定性之间存在线性相关性。在某些情况下,潜在二进制解释变量可以在预测变量的预测中导致高达70%的相对误差。观察到的现象称分析师注意到分析师的注意力,在扣除结论时必须考虑到。

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