Staggered adoption of policies by different units at different times creates promising opportunities for observational causal inference. Estimation remains challenging, however, and common regression methods can give misleading results. A promising alternative is the synthetic control method (SCM), which finds a weighted average of control units that closely balances the treated unit’s pre-treatment outcomes. In this paper, we generalize SCM, originally designed to study a single treated unit, to the staggered adoption setting. We first bound the error for the average effect and show that it depends on both the imbalance for each treated unit separately and the imbalance for the average of the treated units. We then propose ‘partially poole...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
The Synthetic Control Method (SCM) has become a widely used tool in both identifying and estimating ...
The dissertation is part of the flourishing literature that estimates the causal effect of policy in...
Staggered adoption of policies by different units at different times creates promising opportunities...
The synthetic control method (SCM) is a popular approach for estimating the impact of a treatment on...
The synthetic control method (SCM) is a new, popular method developed for the purpose of estimating ...
To infer the treatment effect for a single treated unit using panel data, synthetic control methods ...
The synthetic control method (SCM) is widely used to evaluate causal effects under quasi-experimenta...
Background: Many public health interventions cannot be evaluated using randomised controlled trials ...
In observational studies, researchers wish to study the effect of a treatment without directly contr...
We analyze the conditions under which the Synthetic Control (SC) estimator is unbiased. We show that...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
When evaluating the impact of a policy (e.g., gun control) on a metric of interest (e.g., crime-rate...
Background: Many public health interventions cannot be evaluated using randomised controlled trials....
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
The Synthetic Control Method (SCM) has become a widely used tool in both identifying and estimating ...
The dissertation is part of the flourishing literature that estimates the causal effect of policy in...
Staggered adoption of policies by different units at different times creates promising opportunities...
The synthetic control method (SCM) is a popular approach for estimating the impact of a treatment on...
The synthetic control method (SCM) is a new, popular method developed for the purpose of estimating ...
To infer the treatment effect for a single treated unit using panel data, synthetic control methods ...
The synthetic control method (SCM) is widely used to evaluate causal effects under quasi-experimenta...
Background: Many public health interventions cannot be evaluated using randomised controlled trials ...
In observational studies, researchers wish to study the effect of a treatment without directly contr...
We analyze the conditions under which the Synthetic Control (SC) estimator is unbiased. We show that...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
When evaluating the impact of a policy (e.g., gun control) on a metric of interest (e.g., crime-rate...
Background: Many public health interventions cannot be evaluated using randomised controlled trials....
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
The Synthetic Control Method (SCM) has become a widely used tool in both identifying and estimating ...
The dissertation is part of the flourishing literature that estimates the causal effect of policy in...