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Main Authors: Gomez, Alvaro Almeida, Neto, Antonio Silva, zubelli, Jorge
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.12251
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author Gomez, Alvaro Almeida
Neto, Antonio Silva
zubelli, Jorge
author_facet Gomez, Alvaro Almeida
Neto, Antonio Silva
zubelli, Jorge
contents We extend the diffusion-map formalism to data sets that are induced by asymmetric kernels. Analytical convergence results of the resulting expansion are proved, and an algorithm is proposed to perform the dimensional reduction. In this work we study data sets in which its geometry structure is induced by an asymmetric kernel. We use a priori coordinate system to represent this geometry and, thus, be able to improve the computational complexity of reducing the dimensionality of data sets. A coordinate system connected to the tensor product of Fourier basis is used to represent the underlying geometric structure obtained by the diffusion-map, thus reducing the dimensionality of the data set and making use of the speedup provided by the two-dimensional Fast Fourier Transform algorithm (2-D FFT). We compare our results with those obtained by other eigenvalue expansions, and verify the efficiency of the algorithms with synthetic data, as well as with real data from applications including climate change studies.
format Preprint
id arxiv_https___arxiv_org_abs_2401_12251
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Diffusion Representation for Asymmetric Kernels
Gomez, Alvaro Almeida
Neto, Antonio Silva
zubelli, Jorge
Machine Learning
Image and Video Processing
We extend the diffusion-map formalism to data sets that are induced by asymmetric kernels. Analytical convergence results of the resulting expansion are proved, and an algorithm is proposed to perform the dimensional reduction. In this work we study data sets in which its geometry structure is induced by an asymmetric kernel. We use a priori coordinate system to represent this geometry and, thus, be able to improve the computational complexity of reducing the dimensionality of data sets. A coordinate system connected to the tensor product of Fourier basis is used to represent the underlying geometric structure obtained by the diffusion-map, thus reducing the dimensionality of the data set and making use of the speedup provided by the two-dimensional Fast Fourier Transform algorithm (2-D FFT). We compare our results with those obtained by other eigenvalue expansions, and verify the efficiency of the algorithms with synthetic data, as well as with real data from applications including climate change studies.
title Diffusion Representation for Asymmetric Kernels
topic Machine Learning
Image and Video Processing
url https://arxiv.org/abs/2401.12251