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  • Título del documento:Bayesian Forecast Combination for Inflation Using Rolling Windows: An Emerging Country Case

    Resumen: Typically, when forecasting inflation rates, there are a variety of individual models and a combination of several of these models. We implement a Bayesian shrinkage combination methodology to include information that is not captured by the individual models using expert forecasts as prior information. To take into account two common characteristics in emerging countries’ economies, possible parameter instabilities and non-stationary dynamics, we use a rolling estimation windows technique for series integrated of order one. The empirical results of Colombian inflation show that the Bayesian forecast combination model outperforms the individual models and the random walk predictions for every evaluated forecast horizon. Moreover, these results outperform shrinkage forecasts that consider other priors as equal or zero weights.

    Información General

    • Autor(es): Esta dirección de correo electrónico está protegida contra los robots de spam, necesita tener Javascript activado para poder verla Esta dirección de correo electrónico está protegida contra los robots de spam, necesita tener Javascript activado para poder verla
    • Fecha:2012-04-22
    • Palabras Clave:Forecast combination, Shrinkage, Expert forecasts, Rolling window estimation, Inflation forecasts.
    • Código Jel:C22, C53, C11, E31.
    • Idioma:Ingles
    • Número de páginas:18
    • Correo del administrador de serie: Esta dirección de correo electrónico está protegida contra los robots de spam, necesita tener Javascript activado para poder verla