Detecting and Estimating Multivariate Self-Similar Sources in High-Dimensional Noisy Mixtures

P. Abry, H. Wendt, G. Didier
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引用次数: 7

Abstract

Nowadays, because of the massive and systematic deployment of sensors, systems are routinely monitored via a large collection of time series. However, the actual number of sources driving the temporal dynamics of these time series is often far smaller than the number of observed components. Independently, self-similarity has proven to be a relevant model for temporal dynamics in numerous applications. The present work aims to devise a procedure for identifying the number of multivariate self-similar mixed components and entangled in a large number of noisy observations. It relies on the analysis of the evolution across scales of the eigenstructure of multivariate wavelet representations of data, to which model order selection strategies are applied and compared. Monte Carlo simulations show that the proposed procedure permits identifying the number of multivariate self-similar mixed components and to accurately estimate the corresponding self-similarity exponents, even at low signal to noise ratio and for a very large number of actually observed mixed and noisy time series.
高维噪声混合中多元自相似源的检测与估计
如今,由于传感器的大规模和系统化部署,系统通过大量时间序列进行常规监控。然而,驱动这些时间序列时间动态的源的实际数量往往远远小于观测到的分量的数量。在许多应用中,自相似已被证明是时间动力学的相关模型。本工作旨在设计一种程序,用于识别多变量自相似混合成分的数量,并在大量的噪声观测中纠缠。它依赖于分析数据的多变量小波表示的特征结构的跨尺度演化,并对其应用和比较模型顺序选择策略。蒙特卡罗模拟表明,即使在低信噪比和大量实际观测到的混合和噪声时间序列中,所提出的过程也允许识别多变量自相似混合分量的数量,并准确估计相应的自相似指数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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