Synthetic control method

This is an old revision of this page, as edited by Yujiao1026 (talk | contribs) at 16:04, 1 October 2015 (Synthetic Control Method models). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.

Abadie et al. (2010) motivate the synthetic control method with a model that generalizes the difference-in-differences (fixed-effects) model commonly applied in the empirical social science literature by allowing the effect of unobserved confounding characteristics to vary over time. An attractive feature of the synthetic control method is that it guards against extrapolation outside the convex hull of the data because weights from all control units can be chosen to be positive and sum to one.


Synthetic Control Method models

To construct our synthetic control unit, the vector of weights   such that   ≥ O, for j=2,...,J+1 and  . Each W represents one particular weighted average of control units and therefore one potential synthetic control unit. The goal is to optimize the W* such that the resulting synthetic control unit best approximates the unit exposed to the invention with respect to the outcome to the outcome predictors   and   linear combinations of pre-intervention outcomes   where  


such that:  , ...,   and   hold.


Then :  

yields an estimator of   in periods