A Random Forests Approach to Assess Determinants of Central Bank Independence
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						Published
						Nov  1, 2018
					
				
																																														
													
		
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													Maddalena Cavicchioli
															
				
													
									University of Verona, Verona, Italy
								
																											Angeliki Papana
															
									Aristotle University of Thessaloniki, Thessaloniki, Greece
								
																											Ariadni Papana Dagiasis
															
									Cleveland State University, Cleveland
								
																											Barbara Pistoresi
															
									University of Modena and Reggio Emilia, Italy
								
																									Abstract
A non-parametric efficient statistical method, Random Forests, is implemented for the selection of the determinants of Central Bank Independence (CBI) among a large database of economic, political, and institutional variables for OECD countries. It permits ranking all the determinants based on their importance in respect to the CBI and does not impose a priori assumptions on potential nonlinear relationships in the data. Collinearity issues are resolved, because correlated variables can be simultaneously considered.
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