通过机器学习应用减少人员选拔中的子群体差异

Reducing subgroup differences in personnel selection through the application of machine learning

PERSONNEL PSYCHOLOGY · 2023
被引 32
人大 AABS 4*

中文导读

研究了机器学习能否减少人员选拔中基于种族和性别的子群体差异,发现统计调整必然导致预测偏差,可能降低效度并惩罚高分少数族裔,但机器学习有助于渐进改进。

Abstract

Abstract Researchers have investigated whether machine learning (ML) may be able to resolve one of the most fundamental concerns in personnel selection, which is by helping reduce the subgroup differences (and resulting adverse impact) by race and gender in selection procedure scores. This article presents three such investigations. The findings show that the growing practice of making statistical adjustments to (nonlinear) ML algorithms to reduce subgroup differences must create predictive bias (differential prediction) as a mathematical certainty. This may reduce validity and inadvertently penalize high‐scoring racial minorities. Similarly, one approach that adjusts the ML input data only slightly reduces the subgroup differences but at the cost of slightly reduced model accuracy. Other emerging tactics involve weighting predictors to balance or find a compromise between the competing goals of reducing subgroup differences while maintaining validity, but they have been limited to two outcomes. The third investigation extends this to three outcomes (e.g., validity, subgroup differences, and cost) and presents an online tool. Collectively, the studies in this article illustrate that ML is unlikely to be able to resolve the issue of adverse impact, but it may assist in finding incremental improvements.

人员选拔机器学习子群体差异预测效度人工智能