Using Credit Variables to Date Business Cycle and to Estimate the Probabilities of Recession in Real Time
Valentina Aprigliano and
Danilo Liberati
Manchester School, 2021, vol. 89, issue S1, 76-96
Abstract:
Following the debate on the relationship between business and financial cycle rekindled in the last decade since the global financial crisis, we assess the ability of some financial indicators to track the Italian business cycle. We mostly use credit variables to detect the turning points and to estimate the probability of recession in real time. A dynamic factor model with Markov‐switching regimes is used to handle a large data set and to cope with the nonlinear evolution of the business cycle. The in‐sample results strongly support the capacity of credit variables to estimate the probability of recessions and the implied coincident indicator proves their ability to fit the business cycle. Also in real time the contribution of credit is not negligible compared to that of the industrial production, currently used for the conjunctural analysis.
Date: 2021
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https://doi.org/10.1111/manc.12292
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Working Paper: Using credit variables to date business cycle and to estimate the probabilities of recession in real time (2019) 
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Persistent link: https://EconPapers.repec.org/RePEc:bla:manchs:v:89:y:2021:i:s1:p:76-96
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