To infer the treatment effect for a single treated unit using panel data, synthetic control methods construct a linear combination of control units' outcomes that mimics the treated unit's pre-treatment outcome trajectory. This linear combination is subsequently used to impute the counterfactual outcomes of the treated unit had it not been treated in the post-treatment period, and used to estimate the treatment effect. Existing synthetic control methods rely on correctly modeling certain aspects of the counterfactual outcome generating mechanism and may require near-perfect matching of the pre-treatment trajectory. Inspired by proximal causal inference, we obtain two novel nonparametric identifying formulas for the average treatment effect ...
Consider a setting where there are $N$ heterogeneous units (e.g., individuals, sub-populations) and ...
Staggered adoption of policies by different units at different times creates promising opportunities...
When evaluating the impact of a policy (e.g., gun control) on a metric of interest (e.g., crime-rate...
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...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
We analyze the conditions under which the Synthetic Control (SC) estimator is unbiased. We show that...
Background: Many public health interventions cannot be evaluated using randomised controlled trials ...
© 2018 Muhammad Amjad, Devavrat Shah, and Dennis Shen. We present a robust generalization of the syn...
Background: Many public health interventions cannot be evaluated using randomised controlled trials....
We analyze the properties of the Synthetic Control (SC) and related estimators when the pre-treatmen...
The synthetic control method (SCM) is a new, popular method developed for the purpose of estimating ...
Staggered adoption of policies by different units at different times creates promising opportunities...
It is becoming increasingly popular in applications of synthetic control methods to include the enti...
Consider a setting where there are $N$ heterogeneous units (e.g., individuals, sub-populations) and ...
Staggered adoption of policies by different units at different times creates promising opportunities...
When evaluating the impact of a policy (e.g., gun control) on a metric of interest (e.g., crime-rate...
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...
This paper examines the synthetic control method in contrast to commonly used difference-in-differen...
We analyze the conditions under which the Synthetic Control (SC) estimator is unbiased. We show that...
Background: Many public health interventions cannot be evaluated using randomised controlled trials ...
© 2018 Muhammad Amjad, Devavrat Shah, and Dennis Shen. We present a robust generalization of the syn...
Background: Many public health interventions cannot be evaluated using randomised controlled trials....
We analyze the properties of the Synthetic Control (SC) and related estimators when the pre-treatmen...
The synthetic control method (SCM) is a new, popular method developed for the purpose of estimating ...
Staggered adoption of policies by different units at different times creates promising opportunities...
It is becoming increasingly popular in applications of synthetic control methods to include the enti...
Consider a setting where there are $N$ heterogeneous units (e.g., individuals, sub-populations) and ...
Staggered adoption of policies by different units at different times creates promising opportunities...
When evaluating the impact of a policy (e.g., gun control) on a metric of interest (e.g., crime-rate...