In combating the ongoing global health threat of the Covid-19 pandemic, decision-makers have to take actions based on a multitude of relevant health data with severe potential consequences for the affected patients. Because of their presumed advantages in handling and analyzing vast amounts of data, computer systems of automated decision-making (ADM) are implemented and substitute humans in decision-making processes. In this study, we focus on a specific application of ADM in contrast to human decision-making (HDM), namely the allocation of Covid-19 vaccines to the public. In particular, we elaborate on the role of trust and social group preference on the legitimacy of vaccine allocation. We conducted a survey with a 2x2 randomized factorial design among n=1602 German respondents, in which we utilized distinct decision-making agents (HDM vs. ADM) and prioritization of a specific social group (teachers vs. prisoners) as design factors. Our findings show that general trust in ADM systems and preference for vaccination of a specific social group influence the legitimacy of vaccine allocation. However, contrary to our expectations, trust in the agent making the decision did not moderate the link between social group preference and legitimacy. Moreover, the effect was also not moderated by the type of decision-maker (human vs. algorithm). We conclude that trustworthy ADM systems must not necessarily lead to the legitimacy of ADM systems.
翻译:在应对目前Covid-19大流行病的全球健康威胁方面,决策者必须根据大量相关健康数据采取行动,对受影响病人产生严重的潜在后果。我们假定在处理和分析大量数据方面具有优势,因此实施自动决策计算机系统(ADM),在决策过程中替代人。我们的研究重点是具体应用ADM,而不是人类决策(HDM),即将Covid-19-19疫苗分配给公众。我们特别阐述了信任和社会群体偏好对疫苗分配合法性的作用。我们进行了2x2随机化因素设计调查,在n=1602德国答卷人中,我们利用了不同的决策代理人(HDM诉ADM)和特定社会群体(教师诉囚犯)的优先排序作为设计因素。我们的调查结果显示,对ADM系统的普遍信任和特定社会群体的疫苗接种偏好影响了疫苗分配的合法性。然而,与我们的期望相反,对决策代理人的信任并没有缓和社会团体偏好与A类合法性之间的联系(ADM合法性)。此外,我们还必须确定A类决策的稳健性效果。我们还必须确定A类决定是否具有稳性。