Compressibility analysis of asymptotically mean stationary processes

Abstract

This work provides new results for the analysis of random sequences in terms of ℓp-compressibility. The results characterize the degree in which a random sequence can be approximated by its best k-sparse version under different rates of significant coefficients (compressibility analysis). In particular, the notion of strong ℓp-characterization is introduced to denote a random sequence that has a well-defined asymptotic limit (sample-wise) of its best k-term approximation error when a fixed rate of significant coefficients is considered (fixed-rate analysis). The main theorem of this work shows that the rich family of asymptotically mean stationary (AMS) processes has a strong ℓp-characterization. Furthermore, we present results that characterize and analyze the ℓp-approximation error function for this family of processes. Adding ergodicity in the analysis of AMS processes, we introduce a theorem demonstrating that the approximation error function is constant and determined in closed-form by the stationary mean of the process. Our results and analyses contribute to the theory and understanding of discrete-time sparse processes and, on the technical side, confirm how instrumental the point-wise ergodic theorem is to determine the compressibility expression of discrete-time processes even when stationarity and ergodicity assumptions are relaxed.

Más información

Título según WOS: Compressibility analysis of asymptotically mean stationary processes
Título según SCOPUS: Compressibility analysis of asymptotically mean stationary processes
Título de la Revista: Applied and Computational Harmonic Analysis
Volumen: 56
Editorial: ACADEMIC PRESS INC
Fecha de publicación: 2022
Página final: 97
Idioma: English
DOI:

10.1016/j.acha.2021.08.002

Notas: ISI, SCOPUS