用仿真分析中断时间序列设计。

IF 3 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY
Luke W Miratrix
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引用次数: 3

摘要

我们有时被迫使用中断时间序列(ITS)设计作为潜在政策变化的识别策略,例如当我们只有一个处理单元并且无法获得可比控制时。例如,随着最近县和州范围内的刑事司法改革努力,司法机构改变了其管辖范围内每个人的保释设定惯例,以减少审前拘留率,同时维护法院秩序和公共安全,我们除了过去没有自然可用的比较组。在这种情况下,必须对政策出台前的趋势进行温和建模,允许自回归偏离任何预先存在的趋势等结构,以便准确和现实地评估我们预测的不确定性。我们的目标是提供一种基于普遍理解和使用的建模工具的方法论方法来实现这一目标。我们用模拟来量化不确定性,生成似是而非的轨迹分布,与观察到的进行比较;这种方法自然允许合并季节性和其他随时间变化的协变量,并为政策变化的潜在影响提供置信区间和点估计。我们发现仿真提供了一个自然的框架来捕捉和显示ITS设计中的不确定性。它还允许简单的扩展,如非参数平滑,以便处理多个策略后时间点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Simulation to Analyze Interrupted Time Series Designs.

We are sometimes forced to use the Interrupted Time Series (ITS) design as an identification strategy for potential policy change, such as when we only have a single treated unit and cannot obtain comparable controls. For example, with recent county- and state-wide criminal justice reform efforts, where judicial bodies have changed bail setting practices for everyone in their jurisdiction in order to reduce rates of pre-trial detention while maintaining court order and public safety, we have no natural and available comparison group other than the past. In these contexts, it is imperative to model pre-policy trends with a light touch, allowing for structures such as autoregressive departures from any pre-existing trend, in order to accurately and realistically assess the uncertainty of our projections. We aim to provide a methodological approach rooted in commonly understood and used modeling tools to achieve this. We quantify uncertainty with simulation, generating a distribution of plausible counterfactual trajectories to compare to the observed; this approach naturally allows for incorporating seasonality and other time-varying covariates, and provides confidence intervals along with point estimates for the potential impacts of policy change. We find simulation provides a natural framework to capture and show uncertainty in the ITS designs. It also allows for easy extensions such as nonparametric smoothing in order to handle multiple post-policy time points.

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来源期刊
Evaluation Review
Evaluation Review SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.90
自引率
11.10%
发文量
80
期刊介绍: Evaluation Review is the forum for researchers, planners, and policy makers engaged in the development, implementation, and utilization of studies aimed at the betterment of the human condition. The Editors invite submission of papers reporting the findings of evaluation studies in such fields as child development, health, education, income security, manpower, mental health, criminal justice, and the physical and social environments. In addition, Evaluation Review will contain articles on methodological developments, discussions of the state of the art, and commentaries on issues related to the application of research results. Special features will include periodic review essays, "research briefs", and "craft reports".
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