均值随时间变化的贝叶斯向量自回归预测

Marta Bańbura, Andries van Vlodrop
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引用次数: 18

摘要

我们建立了一个均值和方差随时间变化的向量自回归模型。假设未观察到的时变均值遵循随机游走,我们还将其与长期共识预测联系起来,在精神上类似于所谓的民主先验。方差的变化是通过随机波动来建模的。提出的吉布斯采样器允许研究人员在可行的计算时间内使用大的横截面尺寸。缓慢变化的平均值可以解释许多长期发展,如通胀预期变化、生产率增长放缓或人口结构。我们展示了该模型相对于流行的替代方案的良好预测性能,包括具有明尼苏达先验的标准贝叶斯var、具有民主先验的var和适用于欧元区、美国和日本的标准时变参数var。特别是纳入调查预测信息有助于降低无条件均值的不确定性,并随时间变化提高VAR模型的长期预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting with Bayesian Vector Autoregressions with Time Variation in the Mean
We develop a vector autoregressive model with time variation in the mean and the variance. The unobserved time-varying mean is assumed to follow a random walk and we also link it to long-term Consensus forecasts, similar in spirit to so called democratic priors. The changes in variance are modelled via stochastic volatility. The proposed Gibbs sampler allows the researcher to use a large cross-sectional dimension in a feasible amount of computational time. The slowly changing mean can account for a number of secular developments such as changing inflation expectations, slowing productivity growth or demographics. We show the good forecasting performance of the model relative to popular alternatives, including standard Bayesian VARs with Minnesota priors, VARs with democratic priors and standard time-varying parameter VARs for the euro area, the United States and Japan. In particular, incorporating survey forecast information helps to reduce the uncertainty about the unconditional mean and along with the time variation improves the long-run forecasting performance of the VAR models.
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