Let's consider more general nonlinear approaches to study teleconnections of climate variables
D. Bueso, M. Piles, G. Camps-Valls

TL;DR
This paper generalizes the complex rotated MCA (xMCA) method for climate data analysis by framing it as a special case of ROCK-PCA, enabling the extraction of nonlinear features from spatio-temporal geophysical signals.
Contribution
It demonstrates that xMCA is a specific instance of ROCK-PCA and introduces kernel methods to extract more expressive nonlinear features in climate data analysis.
Findings
ROCK-PCA can extract nonlinear features from SST data.
xMCA is a special case of ROCK-PCA with linear kernels.
Kernel methods improve feature expressiveness in climate signal analysis.
Abstract
The recent work by (Rieger et al 2021) is concerned with the problem of extracting features from spatio-temporal geophysical signals. The authors introduce the complex rotated MCA (xMCA) to deal with lagged effects and non-orthogonality of the feature representation. This method essentially (1) transforms the signals to a complex plane with the Hilbert transform; (2) applies an oblique (Varimax and Promax) rotation to remove the orthogonality constraint; and (3) performs the eigendecomposition in this complex space (Horel et al, 1984). We argue that this method is essentially a particular case of the method called rotated complex kernel principal component analysis (ROCK-PCA) introduced in (Bueso et al., 2019, 2020), where we proposed the same approach: first transform the data to the complex plane with the Hilbert transform and then apply the varimax rotation, with the only difference…
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Taxonomy
TopicsOceanographic and Atmospheric Processes · Climate variability and models · Geological and Geophysical Studies
