二分类连续结果对逻辑回归中解释变异测度效率的影响:模拟研究与应用

Q4 Mathematics
Suay Erees
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引用次数: 0

摘要

摘要连续结果变量的二分类是医学中常用的方法。在使用二元逻辑回归分析这些变量时,应非常注意选择被解释变异的度量()。由于在逻辑回归中有许多不同的r2,为了对模型做出正确的推断,评估它们的性能变得更加重要。本文的目的是在分析具有二分类结果的模型时揭示渐近更有效和可靠的r2度量。8个最推荐的r2统计量和与潜在连续结果相关的普通最小二乘r2已被纳入。研究了它们的渐近分布。在结果和协变量之间的不同相关条件下,也对它们进行了比较。利用自举法在两种建模情景下进行了广泛的模拟。并给出了一个实际的数据实例。研究结果为有效决策提供了支持和重要依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of dichotomizing continuous outcome on efficiencies of measures of explained variation in logistic regression: Simulation study and application
Abstract Dichotomizing continuous outcome variables is a common procedure in medical sciences. When analyzing these variables using binary logistic regression, great attention should be paid to the choice of the measure of explained variation ( . Since there are many different R 2 in logistic regression, in order to make correct inferences about models, evaluating their performances has become more important. The purpose of this paper is to reveal asymptotically more efficient and reliable R 2 measure when analyzing the models with dichotomized outcome. The eight most recommended R 2 statistics and ordinary least squares R 2 associated with the underlying continuous outcome have been included. Their asymptotic distributions have been studied. They have also been compared under varying correlational conditions between outcome and covariate. Extensive simulations using the bootstrap method have been conducted under two modeling scenarios. A real data example is also presented. The findings provide support and important basis for making efficient decisions.
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CiteScore
1.00
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