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连续时间局部平稳小波过程

Continuous-time locally stationary wavelet processes

Biometrika · 2025
被引 0
ABS 4

中文导读

本文提出连续时间局部平稳小波过程,首次为不规则采样数据提供基于尺度的时域模型,并开发了从采样时间序列中估计谱和自协方差的方法,在婴儿心率数据上验证了有效性。

Abstract

Abstract This article introduces the class of continuous-time locally stationary wavelet processes. Continuous-time models enable us to properly provide scale-based time series models for irregularly spaced observations for the first time, while also permitting a spectral representation of the process over a continuous range of scales. We derive results for both the theoretical setting, where we assume access to the entire process sample path, and a more practical one, which develops methods for estimating the quantities of interest from sampled time series. The latter estimates are accurately computable in reasonable time by solving the relevant linear integral equation using the iterative soft-thresholding algorithm of Daubechies et al. (2004). Appropriate smoothing techniques are also developed and applied in this new setting. Comparisons to previous methods are conducted on the heart rate time series of a sleeping infant. Additionally, we exemplify our new methods by computing spectral and autocovariance estimates on irregularly spaced heart rate data obtained from a recent sleep-state study.

时间序列分析小波分析信号处理生物医学应用