基于多处理组双重差分方法的识别问题

Identification Based on Difference‐in‐Differences Approaches with Multiple Treatments

Oxford Bulletin of Economics and Statistics · 2017
被引 38
人大 AABS 3

中文导读

讨论多处理组下双重差分方法的识别问题,指出共同趋势假设会限制效应异质性,但在处理效应有序时,估计量仍能给出处理效应的下界。

Abstract

Abstract This paper discusses identification based on difference‐in‐differences (DiD) approaches with multiple treatments. It shows that an appropriate adaptation of the common trend assumption underlying the DiD strategy for the comparison of two treatments restricts the possibility of effect heterogeneity for at least one of the treatments. The required assumption of effect homogeneity is likely to be violated because of non‐random assignment to treatment based on both observables and unobservables. However, this paper shows that, under certain conditions, the DiD estimate comparing two treatments identifies a lower bound in absolute values on the average treatment effect on the treated compared to the unobserved non‐treatment state, even if effect homogeneity is violated. This is possible if the treatments have ordered treatment effects, that is, in expectation, the effects of both treatments compared to no treatment have the same sign, and one treatment has a stronger effect than the other treatment on the respective recipients. Such assumptions are plausible if treatments are ordered or vary in intensity.

双重差分法多处理组共同趋势假设处理效应有序性