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3 months ago

Graph Invariant Kernels

{Paolo Frasconi Luc De Raedt Francesco Orsini}

Graph Invariant Kernels

Abstract

We introduce a novel kernel that upgrades the Weisfeiler-Lehman and other graph kernels to effectively exploit high-dimensional and continuous vertex attributes. Graphs are first decomposed into subgraphs. Vertices of the subgraphs are then compared by a kernel that combines the similarity of their labels and the similarity of their structural role, using a suitable vertex invariant. By changing this invariant we obtain a family of graph kernels which includes generalizations of Weisfeiler-Lehman, NSPDK, and propagation kernels. We demonstrate empirically that these kernels obtain state-of-the-art results on relational data sets.

Benchmarks

BenchmarkMethodologyMetrics
graph-classification-on-frankensteinGWL_WL
Accuracy: 78.9

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Graph Invariant Kernels | Papers | HyperAI