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Réévaluation des modèles d’estimation précoce de la croissance

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  • Françoise Charpin

    (OFCE - Observatoire français des conjonctures économiques (Sciences Po) - Sciences Po - Sciences Po)

Abstract

In the number 108 of the OFCE review, nowcasting factor models of French growth were proposed and assessed in pseudo real time over the period 2001-2007. The financial crisis has reduced their accuracy. The new basis of the French quarterly accounts published mid-may 2011 modifies also the results noticeably because it concerns GDP growth over the whole estimation period. Thus, it is the opportunity to reassess these models presented in Charpin (2009). It is also the occasion to confront them to other models by comparing their performance in pseudo real time over the period 2001 Q1 – 2011 Q1.

Suggested Citation

  • Françoise Charpin, 2011. "Réévaluation des modèles d’estimation précoce de la croissance," Post-Print hal-03461522, HAL.
  • Handle: RePEc:hal:journl:hal-03461522
    DOI: 10.3917/reof.118.0129
    Note: View the original document on HAL open archive server: https://sciencespo.hal.science/hal-03461522
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    Keywords

    Prévision du PIB; Modèles à facteurs;

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