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引用次数: 0
摘要
由于双向固定效应在对每组不同时间进行干预的影响评估方面存在局限性,因此近年来计量经济学文献以及最近的流行病学都强调了 "交错干预"。虽然提出了许多替代策略(如交错差分法),但重点主要放在有一个或多个对照组的情况下。然而,由于可用数据的限制,或由于所有单位最终都接受了干预措施,往往无法获得对照组。在这种情况下,中断时间序列(ITS)设计可以作为一种适当的替代方法。在交错干预的情况下,ITS 分析的常用模型规格在多大程度上受到限制,这仍然是方法论文献中一个未充分探索的领域。在这项工作中,我们旨在证明标准的 ITS 模型规范通常会对交错干预产生有偏差的结果,我们提出了替代模型规范,这些规范受到差分文献最新发展的启发,提出了适应的分析策略。
The limitations of the two-way fixed effects for the impact evaluation of interventions that occur at different times for each group have meant that 'staggered interventions' have been highlighted in recent years in the econometric literature and, more recently, in epidemiology. Although many alternative strategies (such as staggered difference-in-differences) have been proposed, the focus has predominantly been on scenarios in which one or more control groups are available. However, control groups are often unavailable, due to limitations in the available data or because all units eventually receive the intervention. In this context, interrupted time series (ITS) designs can constitute an appropriate alternative. The extent to which common model specifications for ITS analyses are limited in the case of staggered interventions remains an underexplored area in the methodological literature. In this work, we aim to demonstrate that standard ITS model specifications typically yield biased results for staggered interventions and we propose alternative model specifications that were inspired by recent developments in the difference-in-differences literature to propose adapted analytical strategies.
期刊介绍:
The International Journal of Epidemiology is a vital resource for individuals seeking to stay updated on the latest advancements and emerging trends in the field of epidemiology worldwide.
The journal fosters communication among researchers, educators, and practitioners involved in the study, teaching, and application of epidemiology pertaining to both communicable and non-communicable diseases. It also includes research on health services and medical care.
Furthermore, the journal presents new methodologies in epidemiology and statistics, catering to professionals working in social and preventive medicine. Published six times a year, the International Journal of Epidemiology provides a comprehensive platform for the analysis of data.
Overall, this journal is an indispensable tool for staying informed and connected within the dynamic realm of epidemiology.