Machine learning applications to personnel selection: Current illustrations, lessons learned, and future research

IF 4.7 2区 心理学 Q1 MANAGEMENT
Michael A. Campion, Emily D. Campion
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引用次数: 0

Abstract

Abstract Machine learning (ML) may be the biggest innovative force in personnel selection since the invention of employment tests. As such, the purpose of this special issue was to draw out research from applied settings to supplement the work that appeared in academic journals. In this overview article, we aim to complement the special issue in five ways: (1) provide a brief tutorial on some ML concepts and illustrate the potential applications in selection, along with their strengths and weaknesses; (2) summarize findings of the four articles in the special issue and provide an independent appraisal of the strength of the evidence; (3) identify some of the less‐obvious lessons learned and other insights that researchers new to ML might not clearly recognize from reading the special issue; (4) present best practices at this stage of the knowledge in selection; and (5) propose recommendations for future needed research based on the articles in the special issue and the current state of the science.
机器学习在人员选择中的应用:当前的例证、经验教训和未来的研究
摘要机器学习(ML)可能是自就业测试发明以来人才选择领域最大的创新力量。因此,这期特刊的目的是从应用环境中提取研究,以补充出现在学术期刊上的工作。在这篇概述文章中,我们的目标是通过五种方式来补充这个特殊问题:(1)提供一些ML概念的简短教程,并说明选择中的潜在应用,以及它们的优缺点;(2)总结特刊中四篇文章的发现,并对证据的强度进行独立评估;(3)识别一些不太明显的经验教训和其他见解,这些见解是ML新手研究人员在阅读特刊时可能无法清楚认识到的;(4)在选择知识的这一阶段提出最佳做法;(5)结合特刊文章和科学现状,提出今后需要进行的研究建议。
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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来源期刊
CiteScore
10.20
自引率
5.50%
发文量
57
期刊介绍: Personnel Psychology publishes applied psychological research on personnel problems facing public and private sector organizations. Articles deal with all human resource topics, including job analysis and competency development, selection and recruitment, training and development, performance and career management, diversity, rewards and recognition, work attitudes and motivation, and leadership.
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