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Papers/Graph Convolutional Networks with EigenPooling

Graph Convolutional Networks with EigenPooling

Yao Ma, Suhang Wang, Charu C. Aggarwal, Jiliang Tang

2019-04-30Graph Representation LearningRepresentation LearningGraph ClassificationNode ClassificationGeneral ClassificationClassificationLink Prediction
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Abstract

Graph neural networks, which generalize deep neural network models to graph structured data, have attracted increasing attention in recent years. They usually learn node representations by transforming, propagating and aggregating node features and have been proven to improve the performance of many graph related tasks such as node classification and link prediction. To apply graph neural networks for the graph classification task, approaches to generate the \textit{graph representation} from node representations are demanded. A common way is to globally combine the node representations. However, rich structural information is overlooked. Thus a hierarchical pooling procedure is desired to preserve the graph structure during the graph representation learning. There are some recent works on hierarchically learning graph representation analogous to the pooling step in conventional convolutional neural (CNN) networks. However, the local structural information is still largely neglected during the pooling process. In this paper, we introduce a pooling operator $\pooling$ based on graph Fourier transform, which can utilize the node features and local structures during the pooling process. We then design pooling layers based on the pooling operator, which are further combined with traditional GCN convolutional layers to form a graph neural network framework $\m$ for graph classification. Theoretical analysis is provided to understand $\pooling$ from both local and global perspectives. Experimental results of the graph classification task on $6$ commonly used benchmarks demonstrate the effectiveness of the proposed framework.

Results

TaskDatasetMetricValueModel
Graph ClassificationNCI109Accuracy74.9EigenGCN-3
Graph ClassificationNC1Accuracy0.77EigenGCN-3
ClassificationNCI109Accuracy74.9EigenGCN-3
ClassificationNC1Accuracy0.77EigenGCN-3

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