Dimension reduction for time series in a blind source separation context using r
A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä
JOURNAL OF STATISTICAL SOFTWARE, Volume 98, issue 15
AbstractMultivariate time series observations are increasingly common in multiple fields of science but the complex dependencies of such data often translate into intractable models with large number of parameters. An alternative is given by first reducing the dimension of the series and then modelling the resulting uncorrelated signals univariately, avoiding the need for any covariance parameters. A popular and effective framework for this is blind source separation. In this paper we review the dimension reduction tools for time series available in the R package tsBSS. These include methods for estimating the signal dimension of second-order stationary time series, dimension reduction techniques for stochastic volatility models and supervised dimension reduction tools for time series regression. Several examples are provided to illustrate the functionality of the package.
Funding Information: The work of KN was supported by the CRoNoS COST Action IC1408 and the Austrian Science Fund P31881-N32. The work of ST was supported by the CRoNoS COST Action IC1408. The work of JV was supported by Academy of Finland (grant 321883). We would like to thank the anonymous reviewers for their comments which improved the paper and package considerably. Publisher Copyright: © 2021, American Statistical Association. All rights reserved.
Blind source separation, R, Supervised dimension reduction
Nordhausen , K , Matilainen , M , Miettinen , J , Virta , J & Taskinen , S 2021 , ' Dimension reduction for time series in a blind source separation context using r ' , JOURNAL OF STATISTICAL SOFTWARE , vol. 98 , no. 15 , pp. 1-30 . https://doi.org/10.18637/jss.v098.i15