Density of States Graph Kernels
- URL: http://arxiv.org/abs/2010.11341v3
- Date: Wed, 20 Jan 2021 13:29:15 GMT
- Title: Density of States Graph Kernels
- Authors: Leo Huang, Andrew Graven, David Bindel
- Abstract summary: Graph kernels are an established technique for quantifying similarity between graphs.
We recast random walk kernels under the more general framework of density of states.
We use our interpretation to construct scalable, composite density of states based graph kernels.
- Score: 10.200937444995944
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A fundamental problem on graph-structured data is that of quantifying
similarity between graphs. Graph kernels are an established technique for such
tasks; in particular, those based on random walks and return probabilities have
proven to be effective in wide-ranging applications, from bioinformatics to
social networks to computer vision. However, random walk kernels generally
suffer from slowness and tottering, an effect which causes walks to
overemphasize local graph topology, undercutting the importance of global
structure. To correct for these issues, we recast return probability graph
kernels under the more general framework of density of states -- a framework
which uses the lens of spectral analysis to uncover graph motifs and properties
hidden within the interior of the spectrum -- and use our interpretation to
construct scalable, composite density of states based graph kernels which
balance local and global information, leading to higher classification
accuracies on a host of benchmark datasets.
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