Gaussian approximation for the moving averaged modulus wavelet transform and its variants

Gi Ren Liu, Yuan Chung Sheu, Hau Tieng Wu

Research output: Contribution to journalArticlepeer-review

Abstract

The moving average of the complex modulus of the analytic wavelet transform provides a robust time-scale representation for signals to small time shifts and deformation. In this work, we derive the Wiener chaos expansion of this representation for stationary Gaussian processes by the Malliavin calculus and combinatorial techniques. The expansion allows us to obtain a lower bound for the Wasserstein distance between the time-scale representations of two long-range dependent Gaussian processes in terms of Hurst indices. Moreover, we apply the expansion to establish an upper bound for the smooth Wasserstein distance and the Kolmogorov distance between the distributions of a random vector derived from the time-scale representation and its normal counterpart. It is worth mentioning that the expansion consists of infinite Wiener chaos, and the projection coefficients converge to zero slowly as the order of the Wiener chaos increases. We provide a rational-decay upper bound for these distribution distances, the rate of which depends on the nonlinear transformation of the amplitude of the complex wavelet coefficients.

Original languageEnglish (US)
Article number101722
JournalApplied and Computational Harmonic Analysis
Volume74
DOIs
StatePublished - Jan 2025

Keywords

  • Analytic wavelet transform
  • Complex modulus
  • Gaussian approximation
  • Malliavin calculus
  • Smooth Wasserstein distance
  • Stein's method
  • Wiener-Itô decomposition

ASJC Scopus subject areas

  • Applied Mathematics

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