The extensive adoption of business analytics (BA) has brought financial gains and increased efficiencies. However, these advances have simultaneously drawn attention to rising legal and ethical challenges when BA inform decisions with fairness implications. As a response to these concerns, the emerging study of algorithmic fairness deals with algorithmic outputs that may result in disparate outcomes or other forms of injustices for subgroups of the population, especially those who have been historically marginalized. Fairness is relevant on the basis of legal compliance, social responsibility, and utility; if not adequately and systematically addressed, unfair BA systems may lead to societal harms and may also threaten an organization's own survival, its competitiveness, and overall performance. This paper offers a forward-looking, BA-focused review of algorithmic fairness. We first review the state-of-the-art research on sources and measures of bias, as well as bias mitigation algorithms. We then provide a detailed discussion of the utility-fairness relationship, emphasizing that the frequent assumption of a trade-off between these two constructs is often mistaken or short-sighted. Finally, we chart a path forward by identifying opportunities for business scholars to address impactful, open challenges that are key to the effective and responsible deployment of BA.
翻译:广泛采用商业分析方法(BA)带来了财政收益,提高了效率;然而,这些进展同时提请人们注意,当BA作出具有公平影响的决定时,法律和道德挑战日益增加。作为对这些关切的回应,对算法公平的新研究涉及算法产出,这些产出可能导致对人口分组,特别是历来被边缘化的分组产生不同的结果或其他形式的不公正。公平在法律合规、社会责任和效用的基础上具有相关性;不公平的BA系统如果得不到充分和系统的处理,可能导致社会损害,并可能威胁到一个组织自身的生存、竞争力和总体业绩。本文对算法公平性进行了前瞻性的、以BA为重点的审查。我们首先审查关于偏向的来源和措施的最新研究,以及减少偏向的算法。我们然后详细讨论效用公平关系,强调这两个构思之间经常发生交易往往是错误或短视的。最后,我们通过为商业学者确定解决影响、公开挑战的机会,这是有效、负责地部署BA的关键。