Test of the Latent Dimension of a Spatial Blind Source Separation Model
Muehlmann, C., Bachoc, F., Nordhausen, K., & Yi, M. (2024). Test of the Latent Dimension of a Spatial Blind Source Separation Model. Statistica Sinica, 34(2), Early online. https://doi.org/10.5705/ss.202021.0326
Published in
Statistica SinicaDate
2024Copyright
© Institute of Statistical Science, Academia Sinica
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 propose a test on the number of white noise components and obtain the asymptotic distribution of its statistic for a general domain. We also demonstrate how computations can be facilitated in the case of gridded observation locations. Based on this test, we obtain a consistent estimator of the true dimension. Simulation studies and an environmental application in the Supplemental Material demonstrate that our test is at least comparable to and often outperforms bootstrap-based techniques, which are also introduced in this paper.
Publisher
Institute of Statistical Science, Academia SinicaISSN Search the Publication Forum
1017-0405Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/160509449
Metadata
Show full item recordCollections
Additional information about funding
The work of Christoph Muehlmann, Klaus Nordhausen and Mengxi Yi are supported by the Austrian Science Fund (No. P31881-N32). The work of Mengxi Yi is also supported by the National Natural Science Foundation of China (No. 12101119).License
Related items
Showing items with similar title or keywords.
-
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 ... -
Robust second-order stationary spatial blind source separation using generalized sign matrices
Sipilä, Mika; Muehlmann, Christoph; Nordhausen, Klaus; Taskinen, Sara (Elsevier, 2024)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 ... -
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 ... -
Signal dimension estimation in BSS models with serial dependence
Nordhausen, Klaus; Taskinen, Sara; Virta, Joni (IEEE, 2022)Many modern multivariate time series datasets contain a large amount of noise, and the first step of the data analysis is to separate the noise channels from the signals of interest. A crucial part of this dimension reduction ... -
Blind source separation for non-stationary random fields
Muehlmann, Christoph; Bachoc, François; Nordhausen, Klaus (Elsevier, 2022)Regional data analysis is concerned with the analysis and modeling of measurements that are spatially separated by specifically accounting for typical features of such data. Namely, measurements in close proximity tend to ...