cs.AI updates on arXiv.org 06月30日
Fairness and Bias in Algorithmic Hiring: a Multidisciplinary Survey
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本文探讨算法招聘技术在招聘流程中的应用,分析算法公平性在解决招聘偏见中的重要性,并指出当前研究在系统、偏见、措施、缓解策略、数据集和法律方面的不足,提出未来研究方向。

arXiv:2309.13933v4 Announce Type: replace-cross Abstract: Employers are adopting algorithmic hiring technology throughout the recruitment pipeline. Algorithmic fairness is especially applicable in this domain due to its high stakes and structural inequalities. Unfortunately, most work in this space provides partial treatment, often constrained by two competing narratives, optimistically focused on replacing biased recruiter decisions or pessimistically pointing to the automation of discrimination. Whether, and more importantly what types of, algorithmic hiring can be less biased and more beneficial to society than low-tech alternatives currently remains unanswered, to the detriment of trustworthiness. This multidisciplinary survey caters to practitioners and researchers with a balanced and integrated coverage of systems, biases, measures, mitigation strategies, datasets, and legal aspects of algorithmic hiring and fairness. Our work supports a contextualized understanding and governance of this technology by highlighting current opportunities and limitations, providing recommendations for future work to ensure shared benefits for all stakeholders.

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算法招聘 公平性 招聘偏见 缓解策略 数据集
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