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High-frequency monitoring of growth at risk
Institution:1. Chair of the Department of Applied Economics, Moscow State Institute of International Relations (MGIMO–University), Russia;2. Department of Theoretical Economics, National Research University Higher School of Economics (NRU HSE), Russia
Abstract:Monitoring changes in financial conditions provides valuable information on the contribution of financial risks to future economic growth. For that purpose, central banks need real-time indicators to promptly adjust their policy stance. In this paper, we extend the quarterly growth-at-risk (GaR) approach of Adrian et al. (2019) by accounting for the high-frequency nature of financial conditions indicators. Specifically, we use Bayesian mixed-data sampling (MIDAS) quantile regressions to exploit the information content of both a financial stress index and a financial conditions index, leading to real-time high-frequency GaR measures for the euro area. We show that our daily GaR indicator (i) displays good GDP nowcasting properties, (ii) can provide an early signal of GDP downturns, and (iii) allows day-to-day assessment of the effects of monetary policies. During the first six months of the Covid-19 pandemic period, it has provided a timely measure of the tail risks to euro-area GDP.
Keywords:Growth at risk  Mixed-data sampling  Bayesian quantile regression  Financial conditions  Euro area
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