Real-Time Forecasting Using Mixed-Frequency Vars with Time-Varying Parameters

Markus Heinrich, Magnus Reif
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Abstract

This paper provides a detailed assessment of the real-time forecast accuracy of a wide range of vector autoregressive models (VAR) that allow for both structural change and indicators sampled at different frequencies. We extend the literature by evaluating a mixed-frequency time-varying parameter VAR with stochastic volatility (MF-TVP-SV-VAR). Overall, the MF-TVP-SV-VAR delivers accurate now- and forecasts and, on average, outperforms its competitors. We assess the models’ accuracy relative to expert forecasts and show that the MF-TVP-SV-VAR delivers better inflation nowcasts in this regard. Using an optimal prediction pool, we moreover demonstrate that the MF-TVP-SV-VAR has gained importance since the Great Recession.
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具有时变参数的混频变量实时预测
本文提供了广泛的矢量自回归模型(VAR)的实时预测精度的详细评估,这些模型允许结构变化和不同频率采样的指标。我们通过评估随机波动率的混合频率时变参数VAR (MF-TVP-SV-VAR)来扩展文献。总体而言,MF-TVP-SV-VAR提供了准确的现在和预测,平均而言,优于其竞争对手。我们评估了模型相对于专家预测的准确性,并表明MF-TVP-SV-VAR在这方面提供了更好的通货膨胀预测。此外,利用最优预测池,我们还证明了mf - tpv - sv - var在大衰退以来变得越来越重要。
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