人工智能招聘中的伦理考虑

Dena F. Mujtaba, N. Mahapatra
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引用次数: 47

摘要

在过去的几年里,机器学习和人工智能在人力资源(HR)应用中变得越来越普遍,比如候选人筛选、简历解析、员工流失和离职预测。尽管人工智能有助于提高这些任务的效率,并且通过自动化似乎减少了偏见,但它严重依赖于人类创造的数据,因此可能会将人类的偏见延续到模型做出的决策中。一些研究表明,在面部识别和候选人排名等机器学习应用中存在偏见。在过去的五年里,这激发了对机器学习公平性主题的积极研究。为了促进公平的算法,已经开发了几个减轻偏见和解释黑盒模型的工具包。本文概述了与招聘相关的公平定义、方法和工具,并建立了在招聘领域使用机器学习时的道德考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ethical Considerations in AI-Based Recruitment
Over the past few years, machine learning and AI have become increasingly common in human resources (HR) applications, such as candidate screening, resume parsing, and employee attrition and turnover prediction. Though AI assists in making these tasks more efficient, and seemingly less biased through automation, it relies heavily on data created by humans, and consequently can have human biases carry over to decisions made by a model. Several studies have shown biases in machine learning applications such as facial recognition and candidate ranking. This has spurred active research on the topic of fairness in machine learning over the last five years. Several toolkits to mitigate biases and interpret black box models have been developed in an effort to promote fair algorithms. This paper presents an overview of fairness definitions, methods, and tools as they relate to recruitment and establishes ethical considerations in the use of machine learning in the hiring space.
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