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Theoretical analysis and computation of the sample Frechet mean for sets of large graphs based on spectral information

An algorithm is described to compute the sample Frechet mean for a set of undirected unweighted graphs using a pseudometric based on the eigenvalues of adjacency matrices.

Year
2022
Venue
arXiv 2022
Authors
2
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arxiv.org/abs/2201.05923ARXIV-DEFAULT
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Abstract

To characterize the location (mean, median) of a set of graphs, one needs a notion of centrality that is adapted to metric spaces, since graph sets are not Euclidean spaces. A standard approach is to consider the Frechet mean. In this work, we equip a set of graphs with the pseudometric defined by the norm between the eigenvalues of their respective adjacency matrix. Unlike the edit distance, this pseudometric reveals structural changes at multiple scales, and is well adapted to studying various statistical problems for graph-valued data. We describe an algorithm to compute an approximation to the sample Frechet mean of a set of undirected unweighted graphs with a fixed size using this pseudometric.

Authors

2