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Counterfactual Analysis and Inference With Nonstationary Data

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  • Ricardo Masini
  • Marcelo C. Medeiros

Abstract

Recently, there has been growing interest in developing econometric tools to conduct counterfactual analysis with aggregate data when a single “treated” unit suffers an intervention, such as a policy change, and there is no obvious control group. Usually, the proposed methods are based on the construction of an artificial/synthetic counterfactual from a pool of “untreated” peers, organized in a panel data structure. In this article, we investigate the consequences of applying such methodologies when the data comprise integrated processes of order 1, I(1), or are trend-stationary. We find that for I(1) processes without a cointegrating relationship (spurious case) the estimator of the effects of the intervention diverges, regardless of its existence. Although spurious regression is a well-known concept in time-series econometrics, they have been ignored in most of the literature on counterfactual estimation based on artificial/synthetic controls. For the case when at least one cointegration relationship exists, we have consistent estimators for the intervention effect albeit with a nonstandard distribution. Finally, we discuss a test based on resampling which can be applied when there is at least one cointegration relationship or when the data are trend-stationary.

Suggested Citation

  • Ricardo Masini & Marcelo C. Medeiros, 2022. "Counterfactual Analysis and Inference With Nonstationary Data," Journal of Business & Economic Statistics, Taylor & Francis Journals, vol. 40(1), pages 227-239, January.
  • Handle: RePEc:taf:jnlbes:v:40:y:2022:i:1:p:227-239
    DOI: 10.1080/07350015.2020.1799814
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    Cited by:

    1. Ziwei Mei & Zhentao Shi, 2022. "On LASSO for High Dimensional Predictive Regression," Papers 2212.07052, arXiv.org, revised Jan 2024.

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