通过帕累托最优加权减少不利影响和优化工作绩效:使用机器学习的收缩公式和正则化技术。

IF 9.4 1区 心理学 Q1 MANAGEMENT Journal of Applied Psychology Pub Date : 2023-09-01 DOI:10.1037/apl0001085
Q Chelsea Song, Chen Tang, Daniel A Newman, Serena Wee
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引用次数: 1

摘要

在人员选择实践中,De Corte等人(2007)的帕累托最优加权方法是减少不利影响和增强多样性的一种有用技术。这种方法产生了一系列招聘解决方案,这些解决方案的特点是多样性与工作绩效之间的权衡,并可能导致更理想的选择结果(有时在不改变人员选择的工作绩效结果的情况下,将少数族裔申请人的工作机会增加一倍)。尽管有这些优点,最近的研究发现了帕累托加权技术的一个潜在问题——帕累托解在交叉验证时存在收缩。为了解决帕累托权衡曲线的收缩问题(即多样性收缩和有效性收缩),我们提供了两个贡献。首先,引入一个收缩近似公式(类似于调整后的R²公式,但适用于整个帕累托权衡曲线)。其次,我们推导了一种用于正则化帕累托最优预测权的新技术(借鉴于机器学习领域),该技术旨在产生不太容易收缩的预测权(类似于脊回归,改编自弹性网技术)。这两种方法——提出的帕累托收缩公式和提出的正则化技术——然后使用蒙特卡罗模拟进行评估。提出了在人员选择中近似潜在的多样性-绩效权衡曲线的建议,同时考虑了收缩。(PsycInfo数据库记录(c) 2023 APA,版权所有)。
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Adverse impact reduction and job performance optimization via pareto-optimal weighting: A shrinkage formula and regularization technique using machine learning.

In personnel selection practice, one useful technique for reducing adverse impact and enhancing diversity is the Pareto-optimal weighting approach of De Corte et al. (2007). This approach produces a series of hiring solutions that characterize a diversity-job performance trade-off and can lead to more optimal selection outcomes (sometimes doubling the number of job offers for minority applicants without changing the job performance outcomes of personnel selection). Despite these advantages, recent research has identified a potential problem with the Pareto-weighting technique-Pareto solutions suffer from shrinkage upon cross-validation. To address the problem of shrinkage in the Pareto trade-off curve (i.e., diversity shrinkage and validity shrinkage), we offer two contributions. First, a shrinkage approximation formula is introduced (similar to a formula for adjusted R², but applicable to the entire Pareto trade-off curve). Second, we derive a novel technique for the regularization of Pareto-optimal predictor weights (borrowed from the field of machine learning), which is designed to produce predictor weights that are less vulnerable to shrinkage (similar to ridge regression and adapted from the elastic net technique). Both approaches-the proposed Pareto shrinkage formula and the proposed regularization technique-are then evaluated using Monte Carlo simulation. Recommendations are provided for approximating potential diversity-performance trade-off curves in personnel selection, while accounting for shrinkage. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

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来源期刊
CiteScore
17.60
自引率
6.10%
发文量
175
期刊介绍: The Journal of Applied Psychology® focuses on publishing original investigations that contribute new knowledge and understanding to fields of applied psychology (excluding clinical and applied experimental or human factors, which are better suited for other APA journals). The journal primarily considers empirical and theoretical investigations that enhance understanding of cognitive, motivational, affective, and behavioral psychological phenomena in work and organizational settings. These phenomena can occur at individual, group, organizational, or cultural levels, and in various work settings such as business, education, training, health, service, government, or military institutions. The journal welcomes submissions from both public and private sector organizations, for-profit or nonprofit. It publishes several types of articles, including: 1.Rigorously conducted empirical investigations that expand conceptual understanding (original investigations or meta-analyses). 2.Theory development articles and integrative conceptual reviews that synthesize literature and generate new theories on psychological phenomena to stimulate novel research. 3.Rigorously conducted qualitative research on phenomena that are challenging to capture with quantitative methods or require inductive theory building.
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