论文标题
想象儿童福利中预测系统以外的新未来:与受影响的利益相关者的定性研究
Imagining new futures beyond predictive systems in child welfare: A qualitative study with impacted stakeholders
论文作者
论文摘要
美国各地的儿童福利机构正在转向数据驱动的预测技术(通常称为预测分析),这些技术使用政府行政数据来协助工人的决策。尽管一些先前的工作探索了利益相关者当前使用数据驱动的预测风险模型(PRM)的关注,但较少的工作询问了利益相关者是否应该首先使用此类工具。在这项工作中,我们与35个受儿童福利系统影响的利益相关者或在其中努力了解他们围绕PRM的信念和关注的人进行了七个设计研讨会,并吸引了他们想象儿童福利系统中数据和技术的新用途。我们发现,参与者担心当前的PRM会延续或加剧儿童福利中现有的问题。参与者提出了使用数据和数据驱动工具来更好地支持受影响社区的新方法,并提出了减轻这些工具可能危害的途径。参与者还建议PRMS的低技术或无技术替代方案来解决儿童福利问题。我们的研究阐明了研究人员和设计师如何与受影响社区的团结起来,可能是为了规避或反对儿童福利机构。
Child welfare agencies across the United States are turning to data-driven predictive technologies (commonly called predictive analytics) which use government administrative data to assist workers' decision-making. While some prior work has explored impacted stakeholders' concerns with current uses of data-driven predictive risk models (PRMs), less work has asked stakeholders whether such tools ought to be used in the first place. In this work, we conducted a set of seven design workshops with 35 stakeholders who have been impacted by the child welfare system or who work in it to understand their beliefs and concerns around PRMs, and to engage them in imagining new uses of data and technologies in the child welfare system. We found that participants worried current PRMs perpetuate or exacerbate existing problems in child welfare. Participants suggested new ways to use data and data-driven tools to better support impacted communities and suggested paths to mitigate possible harms of these tools. Participants also suggested low-tech or no-tech alternatives to PRMs to address problems in child welfare. Our study sheds light on how researchers and designers can work in solidarity with impacted communities, possibly to circumvent or oppose child welfare agencies.