Add survey on GNNs from a graph structural information perspective #78
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I've recently shared our new survey on arxiv: A Network Science perspective of Graph Convolutional Networks: A survey
We survey GNNs from a graph structural information perspective and propose a novel taxonomy that classifies GCNs from three structural information angles, i.e., the layer-wise message aggregation scope, the message content, and the overall learning scope. Thus, adding this paper will make the list more comprehensive and spread awareness of the connections between traditional network science and GNNs.
Thank you for your consideration.