Machine-learning Growth at Risk
Machine-learning Growth at Risk
We analyse growth vulnerabilities in the US using quantile partial correlation regression, a selection-based machine-learning method that achieves model selection consistency under time series. We find that downside risk is primarily driven by financial, labour-market, and housing variables, with their importance changing over time. Decomposing downside risk into its individual components, we construct sector-specific indices that predict it, while controlling for information from other sectors, thereby isolating the downside risks emanating from each sector.
Tobias Adrian、Hongqi Chen、Max-Sebastian Dovì、Ji Hyung Lee
经济学财政、金融
Tobias Adrian,Hongqi Chen,Max-Sebastian Dovì,Ji Hyung Lee.Machine-learning Growth at Risk[EB/OL].(2025-05-31)[2025-06-30].https://arxiv.org/abs/2506.00572.点此复制
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