Please use this identifier to cite or link to this item: https://hdl.handle.net/10419/260465 
Authors: 
Year of Publication: 
2021
Series/Report no.: 
WiSo-HH Working Paper Series No. 62
Publisher: 
Universität Hamburg, Fakultät für Wirtschafts- und Sozialwissenschaften, WiSo-Forschungslabor, Hamburg
Abstract: 
This paper applies causal machine learning methods to analyze the heterogeneous regional impacts of monetary policy in China. The method uncovers the heterogeneous regional impacts of different monetary policy stances on the provincial figures for real GDP growth, CPI inflation and loan growth compared to the national averages. The varying effects of expansionary and contractionary monetary policy phases on Chinese provinces are highlighted and explained. Subsequently, applying interpretable machine learning, the empirical results show that the credit channel is the main channel affecting the regional impacts of monetary policy. An imminent conclusion of the uneven provincial responses to the "one size fits all" monetary policy is that different policymakers should coordinate their efforts to search for the optimal fiscal and monetary policy mix.
Subjects: 
China
monetary policy
regional heterogeneity
machine learning,shadow banking
JEL: 
E52
C54
R11
E61
Document Type: 
Working Paper

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