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Ein neues Modell für die kurzfristige Prognose der Herstellung von Waren und der Ausrüstungsinvestitionen

Author

Listed:
  • Klaus S. Friesenbichler
  • Christian Glocker

    (WIFO)

  • Werner Hölzl
  • Philipp Wegmüller

    (State Secretariat for Economic Affairs)

Abstract

Seit Juni 2018 unterstützt ein dynamisches Faktormodell die WIFO-Prognose der Wertschöpfung der Sachgüterproduktion (Herstellung von Waren) und der Ausrüstungsinvestitionen. Wie eine Überprüfung seiner Prognoseeigenschaften zeigt, hat es einen hohen Vorlauf und kann daher einen wichtigen Input zur Expertenprognose leisten.

Suggested Citation

  • Klaus S. Friesenbichler & Christian Glocker & Werner Hölzl & Philipp Wegmüller, 2018. "Ein neues Modell für die kurzfristige Prognose der Herstellung von Waren und der Ausrüstungsinvestitionen," WIFO Monatsberichte (monthly reports), WIFO, vol. 91(9), pages 651-661, September.
  • Handle: RePEc:wfo:monber:y:2018:i:9:p:651-661
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    References listed on IDEAS

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    Cited by:

    1. Klaus S. Friesenbichler & Sandra Bilek-Steindl & Christian Glocker, 2021. "Österreichs Investitionsperformance im internationalen und sektoralen Vergleich. Erste Analysen zur COVID-19-Krise," WIFO Studies, WIFO, number 67163, February.
    2. Michael Klien & Werner Hölzl, 2019. "Öffentliche Ausschreibungen und Konjunktur. Eine Analyse mit unkonventionellen Daten für die österreichische Bauwirtschaft," WIFO Monatsberichte (monthly reports), WIFO, vol. 92(8), pages 609-618, August.
    3. N. N., 2019. "WIFO-Monatsberichte, Heft 8/2019," WIFO Monatsberichte (monthly reports), WIFO, vol. 92(8), August.

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