Human services systems make key decisions that impact individuals in the society. The U.S. child welfare system makes such decisions, from screening-in hotline reports of suspected abuse or neglect for child protective investigations, placing children in foster care, to returning children to permanent home settings. These complex and impactful decisions on children's lives rely on the judgment of child welfare decisionmakers. Child welfare agencies have been exploring ways to support these decisions with empirical, data-informed methods that include machine learning (ML). This paper describes a conceptual framework for ML to support child welfare decisions. The ML framework guides how child welfare agencies might conceptualize a target problem that ML can solve; vet available administrative data for building ML; formulate and develop ML specifications that mirror relevant populations and interventions the agencies are undertaking; deploy, evaluate, and monitor ML as child welfare context, policy, and practice change over time. Ethical considerations, stakeholder engagement, and avoidance of common pitfalls underpin the framework's impact and success. From abstract to concrete, we describe one application of this framework to support a child welfare decision. This ML framework, though child welfare-focused, is generalizable to solving other public policy problems.
翻译:人类服务系统做出影响社会个人的关键决定。美国儿童福利系统做出这样的决定,从为儿童保护调查而筛选出涉嫌虐待或忽视的热线报告,将儿童安置在寄养机构,到将儿童送回永久家庭环境,这些复杂而有影响的儿童生活决定依赖于儿童福利决策者的判断。儿童福利机构一直在探索以经验、数据知情的方法支持这些决定的方法,包括机器学习(ML),本文件描述了ML支持儿童福利决定的概念框架。ML框架指导儿童福利机构如何将ML能够解决的目标问题概念化;为建设ML审查现有的行政数据;制定和发展ML规格,反映有关机构正在开展的相关人口和干预措施;部署、评价和监测ML作为儿童福利、政策和实践随时间的变化;道德考虑、利益攸关方参与和避免共同的陷阱是框架影响和成功的基础。我们从抽象到具体地描述了这一框架用于支持儿童福利决定的一个应用。这个ML框架尽管以儿童福利为重点,但对于解决其他公共政策问题来说是普遍适用的。