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Comparing Greenbook and Reduced Form Forecasts using a Large Realtime Dataset

机译:使用大型实时数据集比较Greenbook和精简表格预测

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Many recent papers have found that atheoretical forecasting methods using many predictors give better predictions for key rnacroeconomic variables than various small-model methods. The practical relevance of these results is open to question, however, because these papers generally use ex post revised data not available to forecasters and because no comparison is made to best actual practice. We provide some evidence on both of these points using a new large dataset of vintage data synchronized with the Fed's Greenbook forecast. This dataset consists of a large number of variables, as observed at the time of each Greenbook forecast since 1979. Thus, we can compare real-time large dataset predictions to both simple univariate methods and to the Greenbook forecast. For inflation we find that univariate methods are dominated by the best atheoretical large dataset methods and that these, in turn, are dominated by Greenbook. For GDP growth, in contrast. we find that once one takes account of Greenbook's advantage in evaluating the current state of the economy, neither large dataset methods nor the Greenbook process offers much advantage over a univariate autoregressive forecast.
机译:最近的许多论文发现,与许多小模型方法相比,使用许多预测因子的理论预测方法可以更好地预测关键的宏观经济变量。但是,这些结果的实际相关性值得商question,因为这些论文通常使用事前预报员无法获得的事后修订数据,并且因为没有与最佳实践进行比较。我们使用与Fed的Greenbook预测同步的老式数据的新的大型数据集,就这两点提供了一些证据。自1979年以来在每次Greenbook预测时观察到的,该数据集包含大量变量。因此,我们可以将实时大型数据集预测与简单的单变量方法和Greenbook预测进行比较。对于通货膨胀,我们发现单变量方法由最佳的理论上的大型数据集方法控制,而这些方法又由Greenbook控制。相比之下,对于GDP增长。我们发现,一旦考虑了Greenbook在评估当前经济状况方面的优势,大型数据集方法和Greenbook过程都不会提供优于单变量自回归预测的优势。

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