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  • 标题:A Statistical Forecasting Method for Inflation Forecasting: Hitting Every Vector Autoregression and Forecasting under Model Uncertainty
  • 本地全文:下载
  • 作者:Ippei Fujiwara ; Maiko Koga
  • 期刊名称:Monetary and Economic Studies
  • 印刷版ISSN:0288-8432
  • 出版年度:2004
  • 卷号:22
  • 期号:1
  • 出版社:Bank of Japan, Institute for Monetary and Economic Studies
  • 摘要:Typically, when conducting econometric forecasting, estimation is carried out on a forecasting model that is built upon some assumed economic structure. However, such techniques cannot avoid running into the possibility of misspecification, which will occur should there be some error in the assumptions underlying this economic structure. In this paper, in which we concentrate upon inflation forecasting, we present a method of hitting every vector autoregression (VAR) and forecasting under model uncertainty (HEVAR/FMU) that stresses statistical relationships among time-series data, and that makes no structural assumptions, other than to set up the underlying variables. Use of this HEVAR/FMU, in addition to establishing a more objective setting and enabling us to produce forecasts that take uncertainty into account, gives better results when forecasting qualitative movements in inflation. Therefore, we can state that the HEVAR/FMU can also play a valuable role in providing a cross-check for forecasts produced using such structural-type models.
  • 关键词:Inflation; Forecast; Reduced rank VAR; Kernel smoothing; Mixture distribution; Nonparametric test
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