用现代方法测量特异性:使用人格评估的维度、方面和项目来预测表现。

The Journal of applied psychology Pub Date : 2022-08-01 Epub Date: 2021-09-16 DOI:10.1037/apl0000618
Andrew B Speer, Neil D Christiansen, Chet Robie, Rick R Jacobs
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引用次数: 8

摘要

在过去的几十年里,使用性格测量来预测工作相关的结果已经引起了极大的兴趣。本研究使用机器学习(ML)来检查人格层次中用于开发预测算法的最佳水平。对1043名在职警官进行了调查,他们完成了一项多方面人格测试,并对他们的工作表现进行了评估。标准相关效度作为人格层次(维度、方面、项目)的操作化水平、评分方法(单位加权、普通最小二乘回归、弹性净回归)、内容相关性(所有项目与工作相关项目)和样本量(100、200、300、500、800)的函数进行研究。结果表明,经验推导的分数在所有人格层次上都优于单位权重。在项目水平上,使用弹性网评分(通过超参数调整导致更接近岭回归的解决方案)一致地获得了最高的效度估计,在至少中等样本量(N≥200)的维度或方面,普通最小二乘法和弹性网之间的差异最小。一种探索性的建模方法,当所有的项目内容都被使用时,当项目池只被降级为与工作相关的人格特质时,它的得分并不好。综上所述,研究结果表明,人格评分应该发生在狭窄的操作化上,至少要到小面水平。此外,本研究还展示了机器学习不仅可以用于最大化标准相关的有效性,还可以用于测试组织科学中长期存在的理论问题。(PsycInfo Database Record (c) 2022 APA,版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measurement specificity with modern methods: Using dimensions, facets, and items from personality assessments to predict performance.

The use of personality measures to predict work-related outcomes has been of great interest over the past several decades. The present study used machine learning (ML) to examine the optimal level in the personality hierarchy to use in developing predictive algorithms. This issue was examined in a sample of incumbent police officers (N = 1,043) who completed a multifaceted personality measure and were rated on their job performance. Criterion-related validity was investigated as a function of level of operationalization in the personality hierarchy (dimensions, facets, items), scoring method (unit weighting, ordinary least-squares regression, elastic net regression), content relevance (all items vs. job-related items), and sample size (100, 200, 300, 500, 800). Results showed that empirically derived scores outperformed unit weighting across all levels of the personality hierarchy. The highest validity estimates were consistently obtained using elastic net scoring (with hyperparameter tuning resulting in solutions closer to ridge regression) at the item level, with minimal differences between ordinary least squares and elastic net for dimensions or facets with at least moderate sample sizes (N ≥ 200). An exploratory modeling approach where all item content was used did not outperform scoring when the item pool was relegated to only job-relevant personality traits. Taken together, findings suggest that personality scoring should occur at narrow operationalizations down to at least the facet level. In addition, this study demonstrated how ML can be used to not only maximize criterion-related validity but also to test long-standing theoretical problems in the organizational sciences. (PsycInfo Database Record (c) 2022 APA, all rights reserved).

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