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Self-supervised Graph-level Representation Learning with Local and Global Structure

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This paper studies unsupervised/self-supervised whole-graph representation learning, which is critical in many tasks such as molecule properties prediction in drug and material discovery. Existing methods mainly focus on preserving the local similarity structure between different graph instances but fail to discover the global semantic structure of the entire data set. In this paper, we propose a unified framework called Local-instance and Global-semantic Learning (GraphLoG) for self-supervised whole-graph representation learning. Specifically, besides preserving the local similarities, GraphLoG introduces the hierarchical prototypes to capture the global semantic clusters. An efficient online expectation-maximization (EM) algorithm is further developed for learning the model. We evaluate GraphLoG by pre-training it on massive unlabeled graphs followed by fine-tuning on downstream tasks. Extensive experiments on both chemical and biological benchmark data sets demonstrate the effectiveness of the proposed approach.

Minghao Xu, Hang Wang, Bingbing Ni, Hongyu Guo, Jian Tang• 2021

Related benchmarks

TaskDatasetResultRank
Graph ClassificationNCI1
Accuracy60.94
460
Graph ClassificationNCI109
Accuracy57.52
223
Molecular property predictionMoleculeNet BBBP (scaffold)
ROC AUC67.2
117
Graph ClassificationHIV
ROC-AUC0.7376
104
Graph property predictionTox21
ROC-AUC0.7164
101
Molecular property predictionMoleculeNet SIDER (scaffold)
ROC-AUC0.598
97
Graph property predictionClinTox
ROC-AUC53.76
94
Graph property predictionBACE
ROC AUC76.6
93
Molecular property predictionMoleculeNet BACE (scaffold)
ROC-AUC82.8
87
Graph property predictionMUV
ROC-AUC0.7252
87
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