Signal processing on large networks with group symmetries
Current methods of graph signal processing rely heavily on the specific structure of the underlying network: the shift operator and the graph Fourier transform are both derived directly from a specific graph. In many cases, the network is subject to error or natural changes over time. This motivated...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
29.03.2023
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Subjects | |
Online Access | Get full text |
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Summary: | Current methods of graph signal processing rely heavily on the specific
structure of the underlying network: the shift operator and the graph Fourier
transform are both derived directly from a specific graph. In many cases, the
network is subject to error or natural changes over time. This motivated a new
perspective on GSP, where the signal processing framework is developed for an
entire class of graphs with similar structures. This approach can be formalized
via the theory of graph limits, where graphs are considered as random samples
from a distribution represented by a graphon.
When the network under consideration has underlying symmetries, they may be
modeled as samples from Cayley graphons. In Cayley graphons, vertices are
sampled from a group, and the link probability between two vertices is
determined by a function of the two corresponding group elements. Infinite
groups such as the 1-dimensional torus can be used to model networks with an
underlying spatial reality. Cayley graphons on finite groups give rise to a
Stochastic Block Model, where the link probabilities between blocks form a
(edge-weighted) Cayley graph. This manuscript summarizes some work on graph
signal processing on large networks, in particular samples of Cayley graphons. |
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DOI: | 10.48550/arxiv.2303.17065 |