全面评述人工智能技术,解决求职招聘中的算法偏见问题

AI Pub Date : 2024-02-07 DOI:10.3390/ai5010019
Elham Albaroudi, Taha Mansouri, Ali Alameer
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引用次数: 0

摘要

该研究全面回顾了人工智能(AI)技术,以解决求职招聘中的算法偏见问题。越来越多的企业在简历筛选中使用人工智能。虽然此举提高了招聘流程的效率,但也容易产生偏见,对组织和整个社会造成不利影响。本研究旨在分析有关人工智能招聘的案例研究,以展示成功的实施和存在偏见的实例。它还试图评估算法偏见的影响以及减少偏见的策略。本研究的基本设计要求对现有文献和研究进行系统回顾,这些文献和研究重点关注为减少招聘中的偏见而采用的人工智能技术。研究结果表明,校正向量空间和数据增强是有效的自然语言处理(NLP)和深度学习技术,可用于减轻招聘中的算法偏见。研究结果强调了人工智能技术在促进招聘过程的公平性和多样性方面的潜力。这项研究通过提高招聘算法的公平性,为人力资源实践做出了贡献。它建议机器和人类需要合作,以提高招聘过程的公平性。研究结果可以帮助人工智能开发人员对算法进行必要的修改,以提高人工智能驱动工具的公平性。这将有助于开发合乎道德的招聘工具,为社会公平做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Review of AI Techniques for Addressing Algorithmic Bias in Job Hiring
The study comprehensively reviews artificial intelligence (AI) techniques for addressing algorithmic bias in job hiring. More businesses are using AI in curriculum vitae (CV) screening. While the move improves efficiency in the recruitment process, it is vulnerable to biases, which have adverse effects on organizations and the broader society. This research aims to analyze case studies on AI hiring to demonstrate both successful implementations and instances of bias. It also seeks to evaluate the impact of algorithmic bias and the strategies to mitigate it. The basic design of the study entails undertaking a systematic review of existing literature and research studies that focus on artificial intelligence techniques employed to mitigate bias in hiring. The results demonstrate that the correction of the vector space and data augmentation are effective natural language processing (NLP) and deep learning techniques for mitigating algorithmic bias in hiring. The findings underscore the potential of artificial intelligence techniques in promoting fairness and diversity in the hiring process with the application of artificial intelligence techniques. The study contributes to human resource practice by enhancing hiring algorithms’ fairness. It recommends the need for collaboration between machines and humans to enhance the fairness of the hiring process. The results can help AI developers make algorithmic changes needed to enhance fairness in AI-driven tools. This will enable the development of ethical hiring tools, contributing to fairness in society.
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