KONG: Kernels for ordered-neighborhood graphs
Draief, Moez, Kutzkov, Konstantin, Scaman, Kevin, Vojnovic, Milan
–Neural Information Processing Systems
We present novel graph kernels for graphs with node and edge labels that have ordered neighborhoods, i.e. when neighbor nodes follow an order. Graphs with ordered neighborhoods are a natural data representation for evolving graphs where edges are created over time, which induces an order. We obtain precise bounds for the approximation accuracy and computational complexity of the proposed approaches and demonstrate their applicability on real datasets. In particular, our experiments demonstrate that neighborhood ordering results in more informative features. For the special case of general graphs, i.e. graphs without ordered neighborhoods, the new graph kernels yield efficient and simple algorithms for the comparison of label distributions between graphs.
Neural Information Processing Systems
Feb-14-2020, 13:57:24 GMT
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