面板数据相关随机系数模型中持续者的平均处理效应

Average treatment effects for stayers with correlated random coefficient models of panel data

Journal of Applied Econometrics · 2020
被引 5
人大 AABS 3

中文导读

研究了在面板数据相关随机系数模型中,如何通过外推法识别持续者的平均处理效应,并应用于估计肯尼亚玉米农户采用农业技术的回报。

Abstract

Summary Correlated random coefficient (CRC) models provide a useful framework for estimating average treatment effects (ATE) with panel data by accommodating heterogeneous treatment effects and flexible patterns of selection. In their simplest form, they lead to the well‐known difference‐in‐differences estimator. CRC models yield estimates of ATE for “movers” (i.e., cross‐sectional units whose treatment status changed over time) while ATE for “stayers” (i.e., cross‐sectional units who retained the same treatment status over time) are not identified. We study additional restrictions on selection into treatment that lead to the identification of ATE for stayers by an extrapolation from quantities identified by the CRC model. We discuss estimation and testing of the extrapolation's validity, then use our results to estimate the returns to agricultural technology adoption among maize farmers in Kenya.

面板数据相关随机系数模型平均处理效应固定组