Limitless stability for Graph Convolutional Networks
This work establishes rigorous, novel and widely applicable stability guarantees and transferability bounds for graph convolutional networks -- without reference to any underlying limit object or statistical distribution. Crucially, utilized graph-shift operators (GSOs) are not necessarily assumed t...
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Zusammenfassung: | This work establishes rigorous, novel and widely applicable stability
guarantees and transferability bounds for graph convolutional networks --
without reference to any underlying limit object or statistical distribution.
Crucially, utilized graph-shift operators (GSOs) are not necessarily assumed to
be normal, allowing for the treatment of networks on both undirected- and for
the first time also directed graphs. Stability to node-level perturbations is
related to an 'adequate (spectral) covering' property of the filters in each
layer. Stability to edge-level perturbations is related to Lipschitz constants
and newly introduced semi-norms of filters. Results on stability to topological
perturbations are obtained through recently developed mathematical-physics
based tools. As an important and novel example, it is showcased that graph
convolutional networks are stable under graph-coarse-graining procedures
(replacing strongly-connected sub-graphs by single nodes) precisely if the GSO
is the graph Laplacian and filters are regular at infinity. These new
theoretical results are supported by corresponding numerical investigations. |
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DOI: | 10.48550/arxiv.2301.11443 |