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首页> 外文期刊>Journal of evaluation in clinical practice >Applying a propensity score-based weighting model to interrupted time series data: Improving causal inference in programme evaluation
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Applying a propensity score-based weighting model to interrupted time series data: Improving causal inference in programme evaluation

机译:将基于倾向得分的权重模型应用于中断的时间序列数据:改进程序评估中的因果推理

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摘要

Often, when conducting programme evaluations or studying the effects of policy changes, researchers may only have access to aggregated time series data, presented as observations spanning both the pre- and post-intervention periods. The most basic analytic model using these data requires only a single group and models the intervention effect using repeated measurements of the dependent variable. This model controls for regression to the mean and is likely to detect a treatment effect if it is sufficiently large. However, many potential sources of bias still remain. Adding one or more control groups to this model could strengthen causal inference if the groups are comparable on pre-intervention covariates and level and trend of the dependent variable. If this condition is not met, the validity of the study findings could be called into question. In this paper we describe a propensity score-based weighted regression model, which overcomes these limitations by weighting the control groups to represent the average outcome that the treatment group would have exhibited in the absence of the intervention. We illustrate this technique studying cigarette sales in California before and after the passage of Proposition 99 in California in 1989. While our results were similar to those of the Synthetic Control method, the weighting approach has the advantage of being technically less complicated, rooted in regression techniques familiar to most researchers, easy to implement using any basic statistical software, may accommodate any number of treatment units, and allows for greater flexibility in the choice of treatment effect estimators.
机译:通常,在进行项目评估或研究政策变化的影响时,研究人员可能只能访问汇总的时间序列数据,这些数据以干预前后的观察结果呈现。使用这些数据的最基本的分析模型仅需要一个小组,并通过重复测量因变量来对干预效果进行建模。该模型控制均值回归,如果足够大,很可能会检测出治疗效果。但是,仍然存在许多潜在的偏见根源。如果干预组在干预前协变量以及因变量的水平和趋势上具有可比性,则向该模型添加一个或多个对照组可以加强因果关系推断。如果不满足此条件,则可能会质疑研究结果的有效性。在本文中,我们描述了一种基于倾向评分的加权回归模型,该模型通过对对照组进行加权以代表在没有干预的情况下治疗组所表现出的平均结果来克服这些限制。我们举例说明了这项技术,用于研究1989年加州99号提案通过之前和之后在加利福尼亚州的卷烟销售。虽然我们的结果与合成控制方法的结果相似,但加权方法的优点是技术上较不复杂,植根于回归大多数研究人员熟悉的技术,可以使用任何基本统计软件轻松实现,可以容纳任何数量的治疗单位,并在选择治疗效果估计量时具有更大的灵活性。

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