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Implications of sparsity and high triangle density for graph representation learning

Authors :
Sansford, Hannah
Modell, Alexander
Whiteley, Nick
Rubin-Delanchy, Patrick
Publication Year :
2022

Abstract

Recent work has shown that sparse graphs containing many triangles cannot be reproduced using a finite-dimensional representation of the nodes, in which link probabilities are inner products. Here, we show that such graphs can be reproduced using an infinite-dimensional inner product model, where the node representations lie on a low-dimensional manifold. Recovering a global representation of the manifold is impossible in a sparse regime. However, we can zoom in on local neighbourhoods, where a lower-dimensional representation is possible. As our constructions allow the points to be uniformly distributed on the manifold, we find evidence against the common perception that triangles imply community structure.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.15277
Document Type :
Working Paper