A Method of Moments Approach to Asymptotically Unbiased Synthetic Controls
A common approach to constructing a Synthetic Control unit is to fit on the outcome variable and covariates in pre-treatment time periods, but it has been shown by Ferman and Pinto (2019) that this approach does not provide asymptotic unbiasedness when the fit is imperfect and the number of controls...
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Zusammenfassung: | A common approach to constructing a Synthetic Control unit is to fit on the
outcome variable and covariates in pre-treatment time periods, but it has been
shown by Ferman and Pinto (2019) that this approach does not provide asymptotic
unbiasedness when the fit is imperfect and the number of controls is fixed.
Many related panel methods have a similar limitation when the number of units
is fixed. I introduce and evaluate a new method in which the Synthetic Control
is constructed using a General Method of Moments approach where units not being
included in the Synthetic Control are used as instruments. I show that a
Synthetic Control Estimator of this form will be asymptotically unbiased as the
number of pre-treatment time periods goes to infinity, even when pre-treatment
fit is imperfect and the number of units is fixed. Furthermore, if both the
number of pre-treatment and post-treatment time periods go to infinity, then
averages of treatment effects can be consistently estimated. I conduct
simulations and an empirical application to compare the performance of this
method with existing approaches in the literature. |
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DOI: | 10.48550/arxiv.2312.01209 |