This work provides new results for the analysis of random sequences in terms of $\ell_p$-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 $\ell_p$-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 $\ell_p$-characterization. Furthermore, we present results that characterize and analyze the $\ell_p$-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.
翻译:这项工作为分析以美元=ell_ p$- 压缩为单位的随机序列提供了新的结果。 其结果特征是随机序列在不同的显著系数率下,以美元- p$- 压缩为单位, 其最优的 美元- 短期近似差错分析 。 随机序列在不同的显著系数率下, 以美元- p$- 压缩为单位, 其最优的 美元- 短期近似差值分析提供了新的结果 。 此项工作的主要理论表明, 最优的 美元- 美元- 偏差序列在不同的显著系数比率下, 其最优的 美元- 美元- p$- p$- 压缩 特性概念化概念化概念化概念化概念化概念化概念化概念化概念化了强的强 $\ ell_ p$_ p$- 美元- 美元- 美元- 特性化特征化概念化概念化概念化概念化概念化概念化概念化概念化概念化概念化概念化理论化的理论化理论化理论化理论化, 我们提出结果和理论化理论化的精确化理论化理论化理论化的理论化理论和理论化理论化理论化的理论化理论化。