Event-Studies with a Continuous Treatment

Brantly Callaway, Andrew Goodman-Bacon, Pedro Sant'Anna
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引用次数: 1

Abstract

This paper builds on the identification results and estimation tools for continuous difference-in-difference designs in Callaway, Goodman-Bacon, and Sant'Anna (2024) to discuss aggregation strategies for event studies with continuous treatments. Estimates from continuous designs are functions of the treatment dosage/intensity variable. Nonparametric plots of these functions show heterogeneity across doses but not heterogeneity over time. Event-study-type plots of aggregated parameters achieve the opposite. We describe how partially aggregating across treatment doses and event time can lead to readable yet nuanced figures that reflect how causal effects evolve over time, potentially in different parts of the treatment dose distribution.
持续治疗的事件研究
本文以 Callaway、Goodman-Bacon 和 Sant'Anna(2024 年)中连续差分设计的识别结果和估计工具为基础,讨论连续治疗事件研究的汇总策略。连续设计的估计值是治疗剂量/强度变量的函数。这些函数的非参数图显示了不同剂量的异质性,但没有显示不同时间的异质性。而汇总参数的事件研究型曲线图则显示出相反的结果。我们介绍了如何通过对治疗剂量和事件时间进行部分汇总,得出可读性强但又有细微差别的图表,以反映因果效应如何随着时间的推移而演变,而且有可能是在治疗剂量分布的不同部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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