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Allocating Interventions Based on Predicted Outcomes: A Case Study on Homelessness Services

机译:基于预测结果的分配干预措施:无家可归服务的案例研究

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Modern statistical and machine learning methods are increasingly capable of modeling individual or personalized treatment effects. These predictions could be used to allocate different interventions across populations based on individual characteristics. In many domains, like social services, the availability of different possible interventions can be severely resource limited. This paper considers possible improvements to the allocation of such services in the context of homelessness service provision in a major metropolitan area. Using data from the homeless system, we use a counterfactual approach to show potential for substantial benefits in terms of reducing the number of families who experience repeat episodes of homelessness by choosing optimal allocations (based on predicted outcomes) to a fixed number of beds in different types of homelessness service facilities. Such changes in the allocation mechanism would not be without tradeoffs, however; a significant fraction of households are predicted to have a higher probability of re-entry in the optimal allocation than in the original one. We discuss the efficiency, equity and fairness issues that arise and consider potential implications for policy.
机译:现代统计和机器学习方法越来越能够建模个体或个性化的治疗效果。这些预测可用于基于各个特征跨越群体的不同干预。在许多域名,如社会服务,不同可能的干预措施的可用性可能是严重资源有限的。本文认为,在主要大都市区的无家可归服务规定的背景下,可能改善此类服务。使用来自无家可归系统的数据,我们使用反事方法来表明在减少通过选择最佳分配(基于预测的结果)到固定数量的床而在不同的床上经历重复无家可归的家庭数量的潜力无家可归服务设施的类型。然而,分配机制的这种变化不会没有权衡;预计家庭的显着分数是在最佳分配中重新进入的概率高于原始户口。我们讨论出现的效率,股权和公平问题,并考虑对政策的潜在影响。

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