Authors
Yan Pan, Markus Matilainen, Sara Taskinen, Klaus Nordhausen
Publication date
2021/2
Journal
WIREs Computational Statistis
Pages
e1550
Description
Second‐order source separation (SOS) is a data analysis tool which can be used for revealing hidden structures in multivariate time series data or as a tool for dimension reduction. Such methods are nowadays increasingly important as more and more high‐dimensional multivariate time series data are measured in numerous fields of applied science. Dimension reduction is crucial, as modeling such high‐dimensional data with multivariate time series models is often impractical as the number of parameters describing dependencies between the component time series is usually too high. SOS methods have their roots in the signal processing literature, where they were first used to separate source signals from an observed signal mixture. The SOS model assumes that the observed time series (signals) is a linear mixture of latent time series (sources) with uncorrelated components. The methods make use of the …
Total citations
202120222023202441135
Scholar articles
Y Pan, M Matilainen, S Taskinen, K Nordhausen - Wiley interdisciplinary reviews: computational statistics, 2022