Publication | Open Access
CensNet: Convolution with Edge-Node Switching in Graph Neural Networks
75
Citations
21
References
2019
Year
Unknown Venue
Edge FeaturesConvolutional Neural NetworkGraph Neural NetworksGraph Representation LearningMachine LearningGraph TheoryData ScienceEngineeringGraph Neural NetworkNetwork AnalysisGraph Signal ProcessingComputer ScienceGeneral GraphGraph AnalysisDeep LearningFeature PropagationGraph Processing
In this paper, we present CensNet, Convolution with Edge-Node Switching graph neural network, for semi-supervised classification and regression in graph-structured data with both node and edge features. CensNet is a general graph embedding framework, which embeds both nodes and edges to a latent feature space. By using line graph of the original undirected graph, the role of nodes and edges are switched, and two novel graph convolution operations are proposed for feature propagation. Experimental results on real-world academic citation networks and quantum chemistry graphs show that our approach has achieved or matched the state-of-the-art performance.
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