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Jiao, Yizhu; Li, Sha; Xie, Yiqing; Zhong, Ming; Ji, Heng; Han, Jiawei (, Association for Computational Linguistics)
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Huang, Jiaxin; Xie, Yiqing; Meng, Yu; Zhang, Yunyi; Han, Jiawei (, KDD:20 The 26th {ACM} {SIGKDD} Conference on Knowledge Discovery and Data Mining)null (Ed.)
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Xie, Yiqing; Li, Sha; Yang, Carl; Wong, Raymond Chi-Wing; Han, Jiawei (, IJCAI'20: Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence, {IJCAI} 2020)null (Ed.)Graph Neural Networks (GNNs) have been shown to be powerful in a wide range of graph-related tasks. While there exists various GNN models, a critical common ingredient is neighborhood aggregation, where the embedding of each node is updated by referring to the embedding of its neighbors. This paper aims to provide a better understanding of this mechanisms by asking the following question: Is neighborhood aggregation always necessary and beneficial? In short, the answer is no. We carve out two conditions under which neighborhood aggregation is not helpful: (1) when a node's neighbors are highly dissimilar and (2) when a node's embedding is already similar with that of its neighbors. We propose novel metrics that quantitatively measure these two circumstances and integrate them into an Adaptive-layer module. Our experiments show that allowing for node-specific aggregation degrees have significant advantage over current GNNs.more » « less
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