MLLGOct 16, 2019

Generative Learning of Counterfactual for Synthetic Control Applications in Econometrics

arXiv:1910.07178v11 citations
Originality Incremental advance
AI Analysis

This provides a method for economists to estimate treatment effects with improved statistical significance, though it appears incremental as it builds on existing synthetic control frameworks.

The authors tackled the problem of estimating treatment effects in econometrics by developing a generative learning approach for synthetic control, applying it to assess the impact of California's 1988 tobacco sales tax and finding 5.8:1 odds in favor of an impact, which was at least three times higher than in control states.

A common statistical problem in econometrics is to estimate the impact of a treatment on a treated unit given a control sample with untreated outcomes. Here we develop a generative learning approach to this problem, learning the probability distribution of the data, which can be used for downstream tasks such as post-treatment counterfactual prediction and hypothesis testing. We use control samples to transform the data to a Gaussian and homoschedastic form and then perform Gaussian process analysis in Fourier space, evaluating the optimal Gaussian kernel via non-parametric power spectrum estimation. We combine this Gaussian prior with the data likelihood given by the pre-treatment data of the single unit, to obtain the synthetic prediction of the unit post-treatment, which minimizes the error variance of synthetic prediction. Given the generative model the minimum variance counterfactual is unique, and comes with an associated error covariance matrix. We extend this basic formalism to include correlations of primary variable with other covariates of interest. Given the probabilistic description of generative model we can compare synthetic data prediction with real data to address the question of whether the treatment had a statistically significant impact. For this purpose we develop a hypothesis testing approach and evaluate the Bayes factor. We apply the method to the well studied example of California (CA) tobacco sales tax of 1988. We also perform a placebo analysis using control states to validate our methodology. Our hypothesis testing method suggests 5.8:1 odds in favor of CA tobacco sales tax having an impact on the tobacco sales, a value that is at least three times higher than any of the 38 control states.

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