寻找算法:重新思考算法招聘时代的招聘公平性

IF 2.6 4区 管理学 Q3 MANAGEMENT
Leo Alexander, Q. Chelsea Song, Louis Hickman, Hyun Joo Shin
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引用次数: 0

摘要

搜寻算法是在线平台用于识别、筛选和通知潜在求职者职位空缺的技术。由于这类技术在网络广告中无处不在,而且人们相信 "寻源算法 "可以缩短招聘时间,同时提高新员工的质量,因此这类技术正迅速普及。然而,鲜为人知的是它们的潜在风险:采购算法可能(有意或无意地)编码或加剧职业人口差异,从而阻碍组织多样性和/或降低在线招聘实践的有效性。由于采购算法会在潜在求职者了解就业机会之前对其进行识别和筛选,因此仅关注求职者的招聘歧视评估方法(如不利影响比率)可能无法发现歧视性采购算法的影响。因此,我们提出了一个雇员招聘过程的扩展模型,以考虑来源算法的作用。根据经验近似值,我们进行了蒙特卡洛模拟研究,以检验采购算法对招聘结果的影响程度和性质。我们的研究结果表明,采购算法可能会阻碍新员工的多样性,同时在人员选择中误导性地暗示积极的多样性结果。我们为采购算法的使用提供了实用的指导,并呼吁在算法招聘时代系统地重新审视如何评估选拔系统的公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sourcing algorithms: Rethinking fairness in hiring in the era of algorithmic recruitment
Sourcing algorithms are technologies used in online platforms to identify, screen, and inform potential applicants about job openings. The popularity of such technologies is rapidly increasing due to their pervasiveness in online advertising and beliefs that sourcing algorithms can decrease time to hire while improving the quality of new hires. What is little known, however, are their potential risks: sourcing algorithms could (intentionally or unintentionally) encode or exacerbate occupational demographic disparities, thereby hindering organizational diversity and/or decreasing the effectiveness of online hiring practices. Because sourcing algorithms identify and screen potential job applicants before they are made aware of employment opportunities, methods for evaluating discrimination in hiring which focus solely on job applicants (e.g., adverse impact ratio), may fail to detect the effects of discriminatory sourcing algorithms. Thus, we propose an expanded model of the employee hiring process to take into account the role of sourcing algorithms. Based on empirical approximations, we conducted a Monte Carlo simulation study to examine the magnitude and nature of sourcing algorithms' influence on hiring outcomes. Our findings suggest that sourcing algorithms could hinder the diversity of new hires while misleadingly suggesting positive diversity outcomes in personnel selection. We provide practical guidance for the use of sourcing algorithms and call for a systematic re‐examination of how to evaluate selection system fairness in the era of algorithmic recruitment.
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来源期刊
CiteScore
4.10
自引率
31.80%
发文量
46
期刊介绍: The International Journal of Selection and Assessment publishes original articles related to all aspects of personnel selection, staffing, and assessment in organizations. Using an effective combination of academic research with professional-led best practice, IJSA aims to develop new knowledge and understanding in these important areas of work psychology and contemporary workforce management.
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