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Forecasting Italian GDP growth with epidemiological data

Author

Listed:
  • Valentina Aprigliano

    (Bank of Italy)

  • Alessandro Borin

    (Bank of Italy)

  • Francesco Paolo Conteduca

    (Bank of Italy)

  • Simone Emiliozzi

    (Bank of Italy)

  • Marco Flaccadoro

    (Bank of Italy)

  • Sabina Marchetti

    (Bank of Italy)

  • Stefania Villa

    (Bank of Italy)

Abstract

The COVID-19 epidemic affected the ability of traditional forecasting models to produce reliable scenarios for the evolution of economic activity. We combine macroeconomic variables with epidemiological indicators to account for the COVID-19 shock and predict the short-term evolution of Italian GDP growth. In particular, we use a mixed-frequency dynamic factor model together with a sophisticated susceptible-infectious-recovered epidemic model featuring endogenous policy responses. First, we simulate different scenarios of economic growth depending on the course of the pandemic in Italy. Second, we evaluate the forecast performance of the model for the period August 2020-March 2021. We find that taking epidemiological indicators into consideration is important for obtaining reliable projections.

Suggested Citation

  • Valentina Aprigliano & Alessandro Borin & Francesco Paolo Conteduca & Simone Emiliozzi & Marco Flaccadoro & Sabina Marchetti & Stefania Villa, 2021. "Forecasting Italian GDP growth with epidemiological data," Questioni di Economia e Finanza (Occasional Papers) 664, Bank of Italy, Economic Research and International Relations Area.
  • Handle: RePEc:bdi:opques:qef_664_21
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    References listed on IDEAS

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    More about this item

    Keywords

    foreign direct investment; capital controls; national security;
    All these keywords.

    JEL classification:

    • F21 - International Economics - - International Factor Movements and International Business - - - International Investment; Long-Term Capital Movements
    • F38 - International Economics - - International Finance - - - International Financial Policy: Financial Transactions Tax; Capital Controls
    • F52 - International Economics - - International Relations, National Security, and International Political Economy - - - National Security; Economic Nationalism

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