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Bayesian Estimation of Fractionally Integrated Vector Autoregressions and an Application to Identified Technology Shocks

Author

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  • Ross Doppelt

    (Penn State)

  • Keith O'Hara

    (New York University)

Abstract

We introduce a new method for Bayesian estimation of fractionally integrated vector autoregressions (FIVARs). The FIVAR, which nests a standard VAR as a special case, allows each series to exhibit long memory, meaning that low frequencies can play a dominant role — a salient feature of many macroeconomic and financial time series. Although the parameter space is typically high-dimensional, our inferential procedure is computationally tractable and relatively easy to implement. We apply our methodology to the identification of technology shocks, an empirical problem in which business-cycle predictions depend on carefully accounting for low-frequency fluctuations.

Suggested Citation

  • Ross Doppelt & Keith O'Hara, 2018. "Bayesian Estimation of Fractionally Integrated Vector Autoregressions and an Application to Identified Technology Shocks," 2018 Meeting Papers 1212, Society for Economic Dynamics.
  • Handle: RePEc:red:sed018:1212
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    References listed on IDEAS

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