Lower Bounds on Approximation Errors to Numerical Solutions of Dynamic Economic Models

  • Judd K
  • Maliar L
  • Maliar S
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Abstract

© 2017 The Econometric Society We propose a novel methodology for evaluating the accuracy of numerical solutions to dynamic economic models. It consists in constructing a lower bound on the size of approximation errors. A small lower bound on errors is a necessary condition for accuracy: If a lower error bound is unacceptably large, then the actual approximation errors are even larger, and hence, the approximation is inaccurate. Our lower-bound error analysis is complementary to the conventional upper-error (worst-case) bound analysis, which provides a sufficient condition for accuracy. As an illustration of our methodology, we assess approximation in the first- and second-order perturbation solutions for two stylized models: a neoclassical growth model and a new Keynesian model. The errors are small for the former model but unacceptably large for the latter model under some empirically relevant parameterizations.

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Judd, K. L., Maliar, L., & Maliar, S. (2017). Lower Bounds on Approximation Errors to Numerical Solutions of Dynamic Economic Models. Econometrica, 85(3), 991–1012. https://doi.org/10.3982/ecta12791

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