INTERMITTENT PROCESS ANALYSIS WITH SCATTERING MOMENTS

Citation
Joan Bruna et al., INTERMITTENT PROCESS ANALYSIS WITH SCATTERING MOMENTS, Annals of statistics , 43(1), 2015, pp. 323-351
Journal title
ISSN journal
00905364
Volume
43
Issue
1
Year of publication
2015
Pages
323 - 351
Database
ACNP
SICI code
Abstract
Scattering moments provide nonparametric models of random processes with stationary increments. They are expected values of random variables computed with a nonexpansive operator, obtained by iteratively applying wavelet transforms and modulus nonlinearities, which preserves the variance. First- and second-order scattering moments are shown to characterize intermittency and self-similarity properties of multiscale processes. Scattering moments of Poisson processes, fractional Brownian motions, Lévy processes and multifractal random walks are shown to have characteristic decay. The Generalized Method of Simulated Moments is applied to scattering moments to estimate data generating models. Numerical applications are shown on financial time-series and on energy dissipation of turbulent flows.