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The performance of non-experimental designs in the evaluation of environmental programs: A design-replication study using a large-scale randomized experiment as a benchmark

机译:非实验设计在环境程序评估中的性能:以大规模随机实验为基准的设计复制研究

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In the field of environmental policy, randomized evaluation designs are rare. Thus researchers typically rely on observational designs to evaluate program impacts. To assess the ability of observational designs to replicate the results of experimental designs, researchers use design-replication studies. In our design-replication study, we use data from a large-scale, randomized field experiment that tested the effectiveness of norm-based messages designed to induce voluntary reductions in water use. We attempt to replicate the experimental results using a nonrandomized comparison group and statistical techniques to eliminate or mitigate observable and unobservable sources of bias. In a companion study, Ferraro and Miranda (2013a) replicate the experimental estimates by following best practices to select a non-experimental control group, by using a rich data set on observable characteristics that includes repeated pre- and post-treatment outcome measures, and by combining panel data methods and matching designs. We assess whether non-experimental designs continue to replicate the experimental benchmark when the data are far less rich, as is often the case in environmental policy evaluation. Trimming and inverse probability weighting and simple difference-in-differences designs perform poorly. Pre-processing the data by matching and then estimating the treatment effect with ordinary least squares (OLS) regression performs best, but a bootstrapping exercise suggests the performance can be sensitive to the sample (yet far less sensitive than OLS without pre-processing).
机译:在环境政策领域,随机评估设计很少见。因此,研究人员通常依靠观察设计来评估程序的影响。为了评估观察性设计复制实验设计结果的能力,研究人员使用了设计复制研究。在我们的设计复制研究中,我们使用来自大规模随机田间实验的数据,该实验测试了旨在诱导自愿减少用水的基于规范的消息的有效性。我们尝试使用非随机比较组和统计技术来复制实验结果,以消除或减轻可观察和不可观察的偏差来源。在一项伴随研究中,Ferraro和Miranda(2013a)通过遵循最佳实践以选择一个非实验对照组来复制实验估计值,方法是使用丰富的可观察特征数据集,其中包括重复的治疗前后结果测量,以及通过组合面板数据方法和匹配设计。我们评估当数据远不如数据丰富时(如环境政策评估中经常出现的情况),非实验设计是否继续复制实验基准。修剪和逆概率加权以及简单的差异差异设计的效果很差。通过匹配数据进行预处理,然后用普通最小二乘(OLS)回归来估计治疗效果最佳,但是自举实验表明该性能对样品敏感(但与未进行预处理的OLS相比,其敏感性要低得多)。

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