We provide a signal modality analysis to characterize and detect nonlinearity schemes in the US Industrial Production Index time series. The analysis is achieved by using the recently proposed ’delay vector variance’ (DVV) method, which examines local predictability of a signal in the phase space to detect the presence of determinism and nonlinearity in a time series. Optimal embedding parameters used in the DVV analysis are obtained via a dierential entropy based method using wavelet-based surrogates. A complex Morlet wavelet is employed to detect and characterize the US business cycle. A comprehensive analysis of the feasibility of this approach is provided. Our results coincide with the business cycles peaks and troughs dates published by the National Bureau of Economic Research (NBER).
|Data di pubblicazione:||2012|
|Titolo:||Alternative Methodology for Turning-Point Detection in Business Cycle: A Wavelet Approach|
|Rivista:||DOCUMENTS DE TRAVAIL DU CENTRE D'ÉCONOMIE DE LA SORBONNE|
|Appare nelle tipologie:||2.1 Articolo su rivista |