AI RESEARCH
Diversity Curves for Graph Representation Learning
arXiv CS.LG
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ArXi:2605.06466v1 Announce Type: new Graph-level representations are crucial tools for characterising structural differences between graphs. However, comparing graphs with different cardinalities, even when sampled from the same underlying distribution, remains challenging. Unsupervised tasks in particular require interpretable, scalable, and reliable size-aware graph representations. Our work addresses these issues by tracking the structural diversity of a graph across coarsening levels.