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Hypothesis testing with error correction models

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  • Kraft, Patrick W.
  • Key, Ellen M.
  • Lebo, Matthew J.

Abstract

Grant and Lebo (2016) and Keele et al. (2016) clarify the conditions under which the popular general error correction model (GECM) can be used and interpreted easily: In a bivariate GECM the data must be integrated in order to rely on the error correction coefficient, $\alpha _1^\ast$, to test cointegration and measure the rate of error correction between a single exogenous x and a dependent variable, y. Here we demonstrate that even if the data are all integrated, the test on $\alpha _1^\ast$ is misunderstood when there is more than a single independent variable. The null hypothesis is that there is no cointegration between y and any x but the correct alternative hypothesis is that y is cointegrated with at least one—but not necessarily more than one—of the x's. A significant $\alpha _1^\ast$ can occur when some I(1) regressors are not cointegrated and the equation is not balanced. Thus, the correct limiting distributions of the right-hand-side long-run coefficients may be unknown. We use simulations to demonstrate the problem and then discuss implications for applied examples.

Suggested Citation

  • Kraft, Patrick W. & Key, Ellen M. & Lebo, Matthew J., 2022. "Hypothesis testing with error correction models," Political Science Research and Methods, Cambridge University Press, vol. 10(4), pages 870-878, October.
  • Handle: RePEc:cup:pscirm:v:10:y:2022:i:4:p:870-878_14
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