Bayesian VAR Forecasts, Survey Information and Structural Change in the Euro Area

G. Gánics, Florens Odendahl
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引用次数: 57

Abstract

Abstract We incorporate external information extracted from the European Central Bank’s Survey of Professional Forecasters into the predictions of a Bayesian VAR using entropic tilting and soft conditioning. The resulting conditional forecasts significantly improve the plain BVAR point and density forecasts. Importantly, we do not restrict the forecasts at a specific quarterly horizon but their possible paths over several horizons jointly since the survey information comes in the form of one- and two-year-ahead expectations. As well as improving the accuracy of the variable that we target, the spillover effects on “other-than-targeted” variables are relevant in size and are statistically significant. We document that the baseline BVAR exhibits an upward bias for GDP growth after the financial crisis, and our results provide evidence that survey forecasts can help mitigate the effects of structural breaks on the forecasting performance of a popular macroeconometric model.
贝叶斯VAR预测,调查信息和欧元区的结构变化
摘要本文利用熵倾斜和软条件作用,将欧洲中央银行专业预测者调查中提取的外部信息纳入贝叶斯VAR预测中。所得到的条件预测显著改善了平原BVAR点和密度的预测。重要的是,我们没有将预测限制在特定的季度范围内,而是将其在几个范围内的可能路径联合起来,因为调查信息是以未来一年和两年的预期形式提供的。除了提高我们所瞄准变量的准确性外,对“非目标”变量的溢出效应在规模上是相关的,并且具有统计显著性。我们的研究表明,金融危机后,基线BVAR对GDP增长表现出向上的倾向,我们的研究结果提供了证据,表明调查预测可以帮助减轻结构性断裂对流行宏观计量模型预测绩效的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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