Ferman, Bruno and Pinto, Cristine (2016): Revisiting the Synthetic Control Estimator.
Preview |
PDF
MPRA_paper_75128.pdf Download (726kB) | Preview |
Abstract
The synthetic control (SC) method has been recently proposed as an alternative to estimate treatment effects in comparative case studies. In this paper, we revisit the SC method in a linear factor model setting and consider the asymptotic properties of the SC estimator when the number of pre-treatment periods (T_0) goes to infinity. Differently from Abadie et al. (2010), we do not condition the analysis on a close-to-perfect pre-treatment fit, as the probability that this happens goes to zero when T_0 is large. We show that, even when a close-to-perfect fit is not achieved, the SC method can substantially improve relative to the difference-in-differences (DID) estimator, both in terms of bias and variance. However, we show that, in our setting, the SC estimator is asymptotically biased if treatment assignment is correlated with the unobserved heterogeneity. If common factors are stationary, then the asymptotic bias of the SC estimator goes to zero when the variance of the transitory shocks is small, which is also the case in which it is more likely that the pre-treatment fit will be good. If a subset of the common factors is non-stationary, then the SC estimator can be asymptotically biased even conditional on a close-to-perfect fit. In this case, the identification assumption relies on orthogonality between treatment assignment and the stationary common factors. Finally, we also consider the statistical properties of the permutation tests suggested in Abadie et al. (2010).
Item Type: | MPRA Paper |
---|---|
Original Title: | Revisiting the Synthetic Control Estimator |
Language: | English |
Keywords: | synthetic control, difference-in-differences; linear factor model, inference, permutation test |
Subjects: | C - Mathematical and Quantitative Methods > C1 - Econometric and Statistical Methods and Methodology: General > C12 - Hypothesis Testing: General C - Mathematical and Quantitative Methods > C1 - Econometric and Statistical Methods and Methodology: General > C13 - Estimation: General C - Mathematical and Quantitative Methods > C2 - Single Equation Models ; Single Variables > C21 - Cross-Sectional Models ; Spatial Models ; Treatment Effect Models ; Quantile Regressions C - Mathematical and Quantitative Methods > C2 - Single Equation Models ; Single Variables > C23 - Panel Data Models ; Spatio-temporal Models |
Item ID: | 75128 |
Depositing User: | Bruno Ferman |
Date Deposited: | 18 Nov 2016 16:19 |
Last Modified: | 02 Oct 2019 19:11 |
References: | Abadie, Alberto, Alexis Diamond, and Jens Hainmueller, “Synthetic Control Methods for Comparative Case Studies: Estimating the Effect of California’s Tobacco Control Program,” Journal of the American Statiscal Association, 2010, 105 (490), 493–505. Abadie, Alberto, Alexis Diamond, and Jens Hainmueller, “Comparative Politics and the Synthetic Control Method,” American Journal of Political Science, 2015, 59 (2), 495–510. Abadie, Alberto, and Javier Gardeazabal, “The Economic Costs of Conflict: A Case Study of the Basque Country,” American Economic Review, 2003, 93 (1), 113–132. Ando, Michihito and Fredrik S¨avje, “Hypothesis Testing with the Synthetic Control Method,” 2013. Working Paper. Athey, Susan and Guido Imbens, “The State of Applied Econometrics-Causality and Policy Evaluation,” arXiv preprint arXiv:1607.00699, 2016. Canay, Ivan A., Joseph P. Romano, and Azeem M. Shaikh, “Randomization Tests under an Approximate Symmetry Assumption?,” 2014. Carvalho, Carlos V., Ricardo Mansini, and Marcelo C. Medeiros, “ArCo: An Artificial Counter- factual Approach for Aggregate Data,” February 2015. Working Paper. Chernozhukov, Victor, Han Hong, and Elie Tamer, “Estimation and Confidence Regions for Parameter Sets in Econometric Models,” Econometrica, 2007, 75 (5), 1243–1284. Doudchenko, Nikolay and Guido Imbens, “Balancing, regression, difference-in-differences and synthetic control methods: A synthesis,” 2016. Ferman, Bruno and Cristine Pinto, “Inference in Differences-in-Differences with Different Group Sizes,” 2016. Working Paper. Ferman, Bruno and Cristine Pinto, and Vitor Possebom, “Cherry Picking with Synthetic Controls,” 2016. Working Paper. Firpo, Sergio and Vitor Possebom, “Synthetic Control Estimator: A Generalized Inference Procedure and Confidence Sets,” April 2016. Gathani, Sachin, Massimiliano Santini, and Dimitri Stoelinga, “Innovative Techniques to Evaluate the Impacts of Private Sector Developments Reforms: An Application to Rwanda and 11 other Countries.” Working Paper. Gobillon, Laurent and Thierry Magnac, “Regional Policy Evaluation: Interative Fixed Effects and Synthetic Controls,” Review of Eco- nomics and Statistics, 2016. Forthcoming. Hahn, Jinyong and Ruoyao Shi, “Synthetic Control and Inference,” 2016. Kaul, Ashok, Stefan Kl¨obner, Gregor Pfeifer, and Manuel Schieler, “Synthetic Control Methods: Never Use All Pre-Intervention Outcomes as Economic Predictors,” May 2015. Working Paper. Newey, Whitney K. and Daniel McFadden, “Chapter 36 Large sample estimation and hypothesis testing,” in “in,” Vol. 4 of Handbook of Econometrics, Elsevier, 1994, pp. 2111 – 2245. Powell, David, “Synthetic Control Estimation Beyond Case Studies: Does the Minimum Wage Reduce Employment?,” 2016. RAND Corporation, WR-1142. Wong, Laurence, “Three Essays in Causal Inference.” PhD dissertation, Stanford University March 2015. Xu, Yiqing, “Regional Policy Evaluation: Interative Fixed Effects and Synthetic Controls,” Political Anal- ysis, 2016. Forthcoming. |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/75128 |
Available Versions of this Item
-
Revisiting the Synthetic Control Estimator. (deposited 24 Sep 2016 11:02)
- Revisiting the Synthetic Control Estimator. (deposited 18 Nov 2016 16:19) [Currently Displayed]