This paper investigates the benefits of internet search data in the form of Google Trends for nowcasting real U.S. GDP growth in real time through the lens of mixed frequency Bayesian Structural Time Series (BSTS) models. We augment and enhance both model and methodology to make these better amenable to nowcasting with large number of potential covariates. Specifically, we allow shrinking state variances towards zero to avoid overfitting, extend the SSVS (spike and slab variable selection) prior to the more flexible normal-inverse-gamma prior which stays agnostic about the underlying model size, as well as adapt the horseshoe prior to the BSTS. The application to nowcasting GDP growth as well as a simulation study demonstrate that the horseshoe prior BSTS improves markedly upon the SSVS and the original BSTS model with the largest gains in dense data-generating-processes. Our application also shows that a large dimensional set of search terms is able to improve nowcasts early in a specific quarter before other macroeconomic data become available. Search terms with high inclusion probability have good economic interpretation, reflecting leading signals of economic anxiety and wealth effects.
翻译:本文通过混合频谱Bayesian结构时间序列(BSTS)模型的透镜,探讨以谷歌趋势为形式的互联网搜索数据对实时实时反映美国实际GDP增长的好处。 我们扩大和加强模型和方法,使这些数据更适合以大量潜在共变形式进行现在的预测。 具体地说,我们允许缩小国家差异以零为单位,以避免过度配置,在更灵活的正常反向伽马之前,扩展SSVS(spike和Slab变量选择),保持对基本模型规模的认知性,以及调整BSTS之前的马蹄。 对当前GDP增长的应用以及模拟研究表明,BSTS以前的马蹄子在SS和原始BSTS模型上明显改善,在密集的数据生成过程中收益最大。 我们的应用还表明,在获得其他宏观经济数据之前四分之一的时间里,大量维基搜索术语能够提前改进现在的搜索。 具有高包容性可能性的搜索术语具有良好的经济解释,反映了经济焦虑和财富效应的主要信号。