Bayesian Donor Set Selection in Synthetic Controls
Abstract
The Synthetic Control Method (SCM) is a widely used approach for assessing the effects of interventions by constructing a synthetic counterfactual using a donor set of untreated units.
However, the effectiveness of SCM heavily relies on the careful selection of an appropriate donor set.
In this paper, we propose a Bayesian hierarchical model that performs donor set selection while preserving the standard SCM simplex constraint on donor weights.
Unlike approaches that assume a fixed donor set, our model allows for the simultaneous estimation of the synthetic control weights and the active donor set.
By using a hierarchical Gamma-Bernoulli construction for the donor weights, the proposed model assigns posterior mass to simplex faces and allows exact zero weights for excluded donors.
We establish a posterior donor-set consistency result under a simplified pre-intervention model.
Through numerical simulations, we show that our model improves donor recovery and weight estimation when the donor pool contains irrelevant or weakly related units, while remaining competitive in full-donor settings.
Finally, we apply our model to the GDP trajectory of West Germany, illustrating its practical applicability.
Our findings suggest that incorporating donor set selection offers a more parsimonious and flexible extension of existing Bayesian synthetic control methods.
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