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Poster

Measuring and Improving the Use of Graph Information in Graph Neural Networks

Yifan HOU · James Cheng · Richard Ma · Hongzhi Chen · Ming-Chang Yang · Jian Zhang · MA KAILI


Abstract:

Graph neural networks (GNNs) have been widely used for representation learning on graph data. However, there is limited understanding on how much performance GNNs actually gain from graph data. This paper introduces a context-surrounding GNN framework and proposes two smoothness metrics to measure the quantity and quality of information obtained from graph data. A new, improved GNN model, called CS-GNN, is then devised to improve the use of graph information based on the smoothness values of a graph. CS-GNN is shown to achieve better performance than existing methods in different types of real graphs.

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