Robust second-order stationary spatial blind source separation using generalized sign matrices
Sipilä, M., Muehlmann, C., Nordhausen, K., & Taskinen, S. (2024). Robust second-order stationary spatial blind source separation using generalized sign matrices. Spatial Statistics, 59, Article 100803. https://doi.org/10.1016/j.spasta.2023.100803
Julkaistu sarjassa
Spatial StatisticsPäivämäärä
2024Tekijänoikeudet
© 2023 The Author(s). Published by Elsevier B.V.
Consider a spatial blind source separation model in which the observed multivariate spatial data are assumed to be a linear mixture of latent stationary spatially uncorrelated random fields. The objective is to recover an unknown mixing procedure as well as the latent random fields. Recently, spatial blind source separation methods that are based on the simultaneous diagonalization of two or more scatter matrices were proposed. In cases involving uncontaminated data, such methods can solve the blind source separation problem, however, in the presence of outlying observations, these methods perform poorly. We propose a robust blind source separation method that employs robust global and local covariance matrices based on generalized spatial signs in simultaneous diagonalization. Simulation studies are employed to illustrate the robustness and efficiency of the proposed methods in various scenarios.
Julkaisija
ElsevierISSN Hae Julkaisufoorumista
2211-6753Asiasanat
Julkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/197360950
Metadata
Näytä kaikki kuvailutiedotKokoelmat
Lisätietoja rahoituksesta
The work of CM and KN was supported by the Austrian Science Fund P31881-N32. The work of KN and ST was supported by the COST Action HiTEc (CA21163). The work of MS was supported by the Vilho, Yrjö and Kalle Väisälä Fund, Finland.Lisenssi
Samankaltainen aineisto
Näytetään aineistoja, joilla on samankaltainen nimeke tai asiasanat.
-
Sign and rank covariance matrices with applications to multivariate analysis
Ollila, Esa (University of Jyväskylä, 2002) -
Nonlinear blind source separation exploiting spatial nonstationarity
Sipilä, Mika; Nordhausen, Klaus; Taskinen, Sara (Elsevier, 2024)In spatial blind source separation the observed multivariate random fields are assumed to be mixtures of latent spatially dependent random fields. The objective is to recover latent random fields by estimating the unmixing ... -
Test of the Latent Dimension of a Spatial Blind Source Separation Model
Muehlmann, Christoph; Bachoc, Francois; Nordhausen, Klaus; Yi, Mengxi (Institute of Statistical Science, Academia Sinica, 2024)We assume a spatial blind source separation model in which the observed multivariate spatial data is a linear mixture of latent spatially uncorrelated random fields containing a number of pure white noise components. We ... -
Robustifying principal component analysis with spatial sign vectors
Taskinen, Sara; Koch, Inge; Oja, Hannu (Elsevier, 2012)In this paper, we apply orthogonally equivariant spatial sign covariance matrices as well as their affine equivariant counterparts in principal component analysis. The influence functions and asymptotic covariance matrices ... -
Spatial Blind Source Separation in the Presence of a Drift
Muehlmann, Christoph; Filzmoser, Peter; Nordhausen, Klaus (Austrian Statistical Society, 2024)Multivariate measurements taken at different spatial locations occur frequently in practice. Proper analysis of such data needs to consider not only dependencies on-sight but also dependencies in and in-between variables ...
Ellei toisin mainittu, julkisesti saatavilla olevia JYX-metatietoja (poislukien tiivistelmät) saa vapaasti uudelleenkäyttää CC0-lisenssillä.