Dual Signal Decomposition of Stochastic Time Series
Alex Glushkovsky

TL;DR
This paper introduces a machine learning-based method for decomposing stochastic time series into mean, dispersion, and noise components, enabling improved smoothing, denoising, and analysis of complex time series data.
Contribution
It presents a novel dual signal decomposition approach using machine learning with regularization and SPC-based weighting, capable of joint or sequential learning for heteroskedastic data.
Findings
Effective noise isolation as a stationary process
Enhanced smoothing and denoising capabilities
Ability to analyze and forecast mean and dispersion
Abstract
The decomposition of a stochastic time series into three component series representing a dual signal - namely, the mean and dispersion - while isolating noise is presented. The decomposition is performed by applying machine learning techniques to fit the dual signal. Machine learning minimizes the loss function which compromises between fitting the original time series and penalizing irregularities of the dual signal. The latter includes terms based on the first and second order derivatives along time. To preserve special patterns, weighting of the regularization components of the loss function has been introduced based on Statistical Process Control methodology. The proposed decomposition can be applied as a smoothing algorithm against the mean and dispersion of the time series. By isolating noise, the proposed decomposition can be seen as a denoising algorithm. Two approaches of the…
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