Gaussian Processes on Hypergraphs
We derive a Matern Gaussian process (GP) on the vertices of a hypergraph. This enables estimation of regression models of observed or latent values associated with the vertices, in which the correlation and uncertainty estimates are informed by the hypergraph structure. We further present a framewor...
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Zusammenfassung: | We derive a Matern Gaussian process (GP) on the vertices of a hypergraph.
This enables estimation of regression models of observed or latent values
associated with the vertices, in which the correlation and uncertainty
estimates are informed by the hypergraph structure. We further present a
framework for embedding the vertices of a hypergraph into a latent space using
the hypergraph GP. Finally, we provide a scheme for identifying a small number
of representative inducing vertices that enables scalable inference through
sparse GPs. We demonstrate the utility of our framework on three challenging
real-world problems that concern multi-class classification for the political
party affiliation of legislators on the basis of voting behaviour,
probabilistic matrix factorisation of movie reviews, and embedding a hypergraph
of animals into a low-dimensional latent space. |
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DOI: | 10.48550/arxiv.2106.01982 |