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Disentangled Generative Graph Representation Learning

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Recently, generative graph models have shown promising results in learning graph representations through self-supervised methods. However, most existing generative graph representation learning (GRL) approaches rely on random masking across the entire graph, which overlooks the entanglement of learned representations. This oversight results in non-robustness and a lack of explainability. Furthermore, disentangling the learned representations remains a significant challenge and has not been sufficiently explored in GRL research. Based on these insights, this paper introduces DiGGR (Disentangled Generative Graph Representation Learning), a self-supervised learning framework. DiGGR aims to learn latent disentangled factors and utilizes them to guide graph mask modeling, thereby enhancing the disentanglement of learned representations and enabling end-to-end joint learning. Extensive experiments on 11 public datasets for two different graph learning tasks demonstrate that DiGGR consistently outperforms many previous self-supervised methods, verifying the effectiveness of the proposed approach.

Xinyue Hu, Zhibin Duan, Xinyang Liu, Yuxin Li, Bo Chen, Chaojie Wang, Yilin He, Hongwei Liu, Mingyuan Zhou• 2024

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy77.61
1252
Graph ClassificationMUTAG
Accuracy88.72
1103
Node ClassificationCiteseer
Accuracy73.98
1037
Node ClassificationPubmed
Accuracy81.3
865
Node ClassificationWisconsin
Accuracy87.25
864
Node ClassificationCornell
Accuracy88.38
851
Node ClassificationTexas
Accuracy0.8595
801
Graph ClassificationNCI1
Accuracy81.23
658
Node ClassificationActor
Accuracy45.35
556
Graph ClassificationCOLLAB
Accuracy83.76
469
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