Robust Confidence Regions for Incomplete Models

  • Epstein L
  • Kaido H
  • Seo K
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Abstract

© 2016 The Econometric SocietyCall an economic model incomplete if it does not generate a probabilistic prediction even given knowledge of all parameter values. We propose a method of inference about unknown parameters for such models that is robust to heterogeneity and dependence of unknown form. The key is a Central Limit Theorem for belief functions; robust confidence regions are then constructed in a fashion paralleling the classical approach. Monte Carlo simulations support tractability of the method and demonstrate its enhanced robustness relative to existing methods.

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Epstein, L. G., Kaido, H., & Seo, K. (2016). Robust Confidence Regions for Incomplete Models. Econometrica, 84(5), 1799–1838. https://doi.org/10.3982/ecta13394

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