心理学
多样性(政治)
困境
人员选择
选择(遗传算法)
测试有效性
评估中心
回归分析
社会心理学
增量有效性
回归
应用心理学
统计
心理测量学
临床心理学
计算机科学
社会学
人工智能
数学
几何学
人类学
精神分析
作者
Andrew B. Speer,Louis Hickman,Q. Chelsea Song,James Perrotta,Rick Jacobs,Dawn Lambert
摘要
Researchers and practitioners have long grappled with balancing the goals of selecting a high-performing and diverse workforce. Recently, Rottman et al. (2023) proposed a new approach to address these goals, which we refer to as multipenalty optimized regression (MOR). MOR extends ridge regression by adding a penalty term that minimizes group differences when fitting the model. Although MOR has shown potential, there are unknowns, including whether MOR is consistently effective in typical selection settings, what conditions impact MOR effectiveness, and whether MOR performs similarly to other multiobjective optimization methods, such as Pareto-normal boundary intersection (Pareto-NBI). Using Monte Carlo simulations (Study 1), we investigated MOR effectiveness and compared it with traditional scoring methods (ridge regression, ordinary least squares, unit weighting) and Pareto-NBI across several factors: (a) number of scales (and corresponding items), (b) operationalization (item or scale), (c) magnitude of predictor criterion-related validity, (d) magnitude of predictor subgroup differences, (e) calibration sample size, and (f) proportion of minorities in the calibration sample. Compared with traditional methods, MOR frequently produced solutions with comparable criterion-related validity but with consistently less adverse impact risk. Pareto-NBI and MOR were similarly effective in performing dual optimization, though MOR was more effective at very small sample sizes (e.g., N < 150) with item-level scoring. Pareto-NBI also became computationally intensive with many predictors, making MOR better suited for big data. Finally, in Study 2, MOR exhibited similar criterion-related validity and lower adverse impact risk relative to other methods across six real-life assessment contexts. We provide recommendations for using multiobjective optimization methods in personnel selection. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
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