A Comparison of Three Approaches to Correct for Direct and Indirect Range Restrictions: A Simulation Study.

Q2 Social Sciences
A. Pfaffel, Barbara Schober, C. Spiel
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引用次数: 14

Abstract

A common methodological problem in the evaluation of the predictive validity of selection methods, e.g. in educational and employment selection, is that the correlation between predictor and criterion is biased. Thorndike’s (1949) formulas are commonly used to correct for this biased correlation. An alternative approach is to view the selection mechanism as a missing data mechanism. The aim of this study was to compare Thorndike’s formulas for direct and indirect range restriction scenarios with two state-of-the-art approaches for handling missing data: full information maximum likelihood (FIML) and multiple imputation by chained equations (MICE). We conducted Monte-Carlo simulations to investigate the accuracy of the population correlation estimates in dependence of the selection ratio and the true population correlation in an experimental design. For a direct range restriction scenario, the three approaches are equally accurate. For an indirect range restriction scenario, the corrections using FIML and MICE are more precise than when using Thorndike’s formula. The higher the selection ratio and the true population correlation, the higher the precision of the population correlation estimates. Our findings indicate that both missing data approaches are alternative corrections to Thorndike’s formulas, especially in the case of indirect range restriction.
三种直接和间接距离限制校正方法的比较:仿真研究。
在评估选择方法的预测有效性时,例如在教育和就业选择中,一个常见的方法学问题是预测器和标准之间的相关性是有偏差的。桑代克(1949)的公式通常用于校正这种偏倚相关性。另一种方法是将选择机制视为缺失的数据机制。本研究的目的是比较桑代克公式的直接和间接范围限制情景与两种最先进的方法来处理缺失数据:全信息最大似然(FIML)和链式方程(MICE)的多重imputation。我们进行了蒙特卡罗模拟,以研究在实验设计中依赖于选择比率和真实种群相关性的种群相关估计的准确性。对于直接的范围限制场景,这三种方法同样准确。对于间接距离限制情况,使用FIML和MICE的修正比使用桑代克公式的修正更精确。选择比和真实种群相关越高,种群相关估计的精度越高。我们的研究结果表明,两种缺失的数据方法都是对桑代克公式的替代修正,特别是在间接范围限制的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.60
自引率
0.00%
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