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Learning Conjoint Attentions for Graph Neural Nets

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In this paper, we present Conjoint Attentions (CAs), a class of novel learning-to-attend strategies for graph neural networks (GNNs). Besides considering the layer-wise node features propagated within the GNN, CAs can additionally incorporate various structural interventions, such as node cluster embedding, and higher-order structural correlations that can be learned outside of GNN, when computing attention scores. The node features that are regarded as significant by the conjoint criteria are therefore more likely to be propagated in the GNN. Given the novel Conjoint Attention strategies, we then propose Graph conjoint attention networks (CATs) that can learn representations embedded with significant latent features deemed by the Conjoint Attentions. Besides, we theoretically validate the discriminative capacity of CATs. CATs utilizing the proposed Conjoint Attention strategies have been extensively tested in well-established benchmarking datasets and comprehensively compared with state-of-the-art baselines. The obtained notable performance demonstrates the effectiveness of the proposed Conjoint Attentions.

Tiantian He, Yew-Soon Ong, Lu Bai• 2021

Related benchmarks

TaskDatasetResultRank
Node ClassificationOgbn-arxiv
Accuracy77.72
191
Node ClusteringCora
Accuracy82.26
115
Node ClusteringCiteseer--
110
Node ClassificationCora (semi-supervised)
Accuracy85.56
103
ClusteringPubmed
Accuracy82.86
61
Node ClassificationCite semi-supervised
Accuracy73.24
61
Semi-supervised node classificationPubmed
Accuracy84.28
60
Node ClassificationCoauthor CS (semi-supervised inductive)
Accuracy93.74
23
Node ClusteringCoauthorCS
Accuracy90.29
16
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