Dynamical systems theory for causal inference with application to synthetic control methods
Abstract
In this paper, we adopt results in nonlinear time series analysis for causal inference in dynamical settings.~Our motivation is policy analysis with panel data, particularly through the use of "synthetic control" methods. These methods regress pre-intervention outcomes of the treated unit to outcomes from a pool of control units, and then use the fitted regression model to estimate causal effects post-intervention. In this setting, we propose to screen out control units that have a weak dynamical relationship to the treated unit. In simulations, we show that this method can mitigate bias from "cherry-picking" of control units, which is usually an important concern. We illustrate on real-world applications, including the tobacco legislation example of \citet{Abadie2010}, and Brexit.
Cite
@article{arxiv.1808.08778,
title = {Dynamical systems theory for causal inference with application to synthetic control methods},
author = {Yi Ding and Panos Toulis},
journal= {arXiv preprint arXiv:1808.08778},
year = {2020}
}
Comments
17 pages, 8 figures