Gender bias in AI-based decision-making systems: a systematic literature review

Ayesha Nadeem, O. Marjanovic, B. Abedin
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引用次数: 5

Abstract

The related literature and industry press suggest that artificial intelligence (AI)-based decision-making systems may be biased towards gender, which in turn impacts individuals and societies. The information system (IS) field has recognised the rich contribution of AI-based outcomes and their effects; however, there is a lack of IS research on the management of gender bias in AI-based decision-making systems and its adverse effects. Hence, the rising concern about gender bias in AI-based decision-making systems is gaining attention. In particular, there is a need for a better understanding of contributing factors and effective approaches to mitigating gender bias in AI-based decision-making systems. Therefore, this study contributes to the existing literature by conducting a Systematic Literature Review (SLR) of the extant literature and presenting a theoretical framework for the management of gender bias in AI-based decision-making systems. The SLR results indicate that the research on gender bias in AI-based decision-making systems is not yet well established, highlighting the great potential for future IS research in this area, as articulated in the paper. Based on this review, we conceptualise gender bias in AI-based decision-making systems as a socio-technical problem and propose a theoretical framework that offers a combination of technological, organisational, and societal approaches as well as four propositions to possibly mitigate the biased effects. Lastly, this paper considers future research on the management of gender bias in AI-based decision-making systems in the organisational context.
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基于人工智能的决策系统中的性别偏见:系统的文献综述
相关文献和行业出版物表明,基于人工智能(AI)的决策系统可能会对性别产生偏见,这反过来又会影响个人和社会。信息系统(IS)领域已经认识到基于人工智能的成果及其影响的丰富贡献;然而,对于基于人工智能的决策系统中性别偏见的管理及其不利影响,缺乏is研究。因此,对基于人工智能的决策系统中性别偏见的担忧日益受到关注。特别是,需要更好地了解促成因素和减少基于人工智能的决策系统中的性别偏见的有效方法。因此,本研究通过对现有文献进行系统文献综述(SLR),并提出基于人工智能的决策系统中性别偏见管理的理论框架,为现有文献做出贡献。SLR结果表明,基于人工智能的决策系统中性别偏见的研究尚未很好地建立起来,这突出了该领域未来is研究的巨大潜力,如本文所述。基于这一综述,我们将基于人工智能的决策系统中的性别偏见概念化为一个社会技术问题,并提出了一个理论框架,该框架提供了技术、组织和社会方法的组合,以及四个可能减轻偏见影响的主张。最后,本文考虑了在组织背景下基于人工智能的决策系统中性别偏见管理的未来研究。
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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