Heat diffusion distance processes: a statistically founded method to analyze graph data sets
We propose two multiscale comparisons of graphs using heat diffusion, allowing to compare graphs without node correspondence or even with different sizes. These multiscale comparisons lead to the definition of Lipschitz-continuous empirical processes indexed by a real parameter. The statistical prop...
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Zusammenfassung: | We propose two multiscale comparisons of graphs using heat diffusion,
allowing to compare graphs without node correspondence or even with different
sizes. These multiscale comparisons lead to the definition of
Lipschitz-continuous empirical processes indexed by a real parameter. The
statistical properties of empirical means of such processes are studied in the
general case. Under mild assumptions, we prove a functional central limit
theorem, as well as a Gaussian approximation with a rate depending only on the
sample size. Once applied to our processes, these results allow to analyze data
sets of pairs of graphs. We design consistent confidence bands around empirical
means and consistent two-sample tests, using bootstrap methods. Their
performances are evaluated by simulations on synthetic data sets. |
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DOI: | 10.48550/arxiv.2109.13213 |