Learn R Programming

GSD (version 1.0.0)

Graph Signal Decomposition

Description

Graph signals residing on the vertices of a graph have recently gained prominence in research in various fields. Many methodologies have been proposed to analyze graph signals by adapting classical signal processing tools. Recently, several notable graph signal decomposition methods have been proposed, which include graph Fourier decomposition based on graph Fourier transform, graph empirical mode decomposition, and statistical graph empirical mode decomposition. This package efficiently implements multiscale analysis applicable to various fields, and offers an effective tool for visualizing and decomposing graph signals. For the detailed methodology, see Ortega et al. (2018) , Shuman et al. (2013) , Tremblay et al. (2014) , and Cho et al. (2024) "Statistical graph empirical mode decomposition by graph denoising and boundary treatment".

Copy Link

Version

Install

install.packages('GSD')

Monthly Downloads

152

Version

1.0.0

License

GPL (>= 2)

Maintainer

Donghoh Kim

Last Published

February 5th, 2024

Functions in GSD (1.0.0)

gplot

Plot of a Graph Signal
ginterpolating

Interpolation of a Graph Signal
gsignal

Graph Object with a Signal
adjmatrix

Weighted Adjacency Matrix
gsmoothing

Smoothing a Graph Signal
gsubway

Seoul Subway Ridership Data
gfdecomp

Graph Fourier Decomposition
sgemd

Statistical Graph Empirical Mode Decomposition
gextrema

Finding Local Extrema of a Graph Signal
gftplot

Plot of the absolute values of the graph Fourier coefficients vs the eigenvalues