The original Finite Selection Model (FSM) was developed in the 1970s to enhance the design of the RAND Health Insurance Experiment (HIE; Newhouse et al. 1993). At the time of its development by Carl Morris (Morris 1979), there were fundamental computational limitations to make the method widely available for practitioners. Today, as randomized experiments increasingly become more common, there is a need for implementing experimental designs that are randomized, balanced, robust, and easily applicable to several treatment groups. To help address this problem, we revisit the original FSM under the potential outcome framework for causal inference and provide its first readily available software implementation. In this paper, we provide an introduction to the FSM and a step-by-step guide for its use in R.
翻译:最初的有限选择模型(FSM)是1970年代开发的,旨在加强RAND健康保险实验的设计(HIE;Newhouse等人,1993年)。在Carl Morris开发该实验时(Morris,1979年),在向从业者广泛提供该方法方面存在着基本的计算限制。如今,随着随机化实验日益普遍,有必要实施随机化、平衡、稳健和易于适用于若干治疗组的实验设计。为了帮助解决这一问题,我们根据可能的因果关系推断结果框架重新审视原密克罗尼西亚,并提供其第一个现成的软件实施。我们在本文件中介绍了密克罗尼西亚,并提供了在R使用该方法的分步骤指南。