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Papers about pretraining and self-supervised learning on Graph Neural Networks (GNN).

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awesome-self-supervised-gnn

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This repository contains a list of papers on the Self-supervised Learning on Graph Neural Networks (GNNs), we categorize them based on their published years.

We will try to make this list updated. If you found any error or any missed paper, please don't hesitate to open issues or pull requests.

Note: πŸ”₯ indicates the paper is extensively cited (e.g., > 80 citations). The code is provided in get_hot.py.

Year 2023

  1. [ICLR 2023] Empowering Graph Representation Learning with Test-Time Graph Transformation [paper] [code]
  2. [ICLR 2023] Multi-task Self-supervised Graph Neural Networks Enable Stronger Task Generalization [paper] [code]
  3. [AAAI 2023] Eliciting Structural and Semantic Global Knowledge in Unsupervised Graph Contrastive Learning [paper] [code]
  4. [arXiv 2023] Truncated Affinity Maximization: One-class Homophily Modeling for Graph Anomaly Detection [paper]
  5. [ICASSP 2023] Contrastive Learning at the Relation and Event Level for Rumor Detection [paper]
  6. [arXiv 2023] AmGCL: Feature Imputation of Attribute Missing Graph via Self-supervised Contrastive Learning [paper]
  7. [arXiv 2023] SEGA: Structural Entropy Guided Anchor View for Graph Contrastive Learning [paper]
  8. [arXiv 2023] CSGCL: Community-Strength-Enhanced Graph Contrastive Learning [paper]
  9. [TKDE 2023] Iterative Graph Self-Distillation [paper]
  10. [TKDE 2023] MINING: Multi-Granularity Network Alignment Based on Contrastive Learning [paper]
  11. [ICASSP 2023] Select The Best: Enhancing Graph Representation with Adaptive Negative Sample Selection [paper]
  12. [ICASSP 2023] Graph Contrastive Learning with Learnable Graph Augmentation [paper]
  13. [arXiv 2023] FormNetV2: Multimodal Graph Contrastive Learning for Form Document Information Extraction [paper]
  14. [INS 2023] A fairness-aware graph contrastive learning recommender framework for social tagging systems [paper]
  15. [arXiv 2023] Improving Knowledge Graph Entity Alignment with Graph Augmentation [paper]
  16. [WWW 2023] Graph Self-supervised Learning with Augmentation-aware Contrastive Learning [paper]
  17. [arXiv 2023] A Systematic Survey of Chemical Pre-trained Models [paper]
  18. [WWW 2023] Self-Supervised Teaching and Learning of Representations on Graphs [paper]
  19. [TKDE 2023] Progressive Hard Negative Masking: From Global Uniformity to Local Tolerance [paper]
  20. [KBS 2023] ST-A-PGCL: Spatiotemporal adaptive periodical graph contrastive learning for traffic prediction under real scenarios [paper]
  21. [WWW 2023] SeeGera: Self-supervised Semi-implicit Graph Variational Auto-encoders with Masking [paper]
  22. [INS 2023] Self-supervised Contrastive Learning on Heterogeneous Graphs with Mutual Constraints of Structure and Feature [paper]
  23. [Scientific Reports 2023] A multi-view contrastive learning for heterogeneous network embedding [paper]
  24. [WWW 2023] Automated Spatio-Temporal Graph Contrastive Learning [paper]
  25. [arXiv 2023] Capturing Fine-grained Semantics in Contrastive Graph Representation Learning [paper]
  26. [arXiv 2023] Decouple Graph Neural Networks: Train Multiple Simple GNNs Simultaneously Instead of One [paper]
  27. [arXiv 2023] ID-MixGCL: Identity Mixup for Graph Contrastive Learning [paper]
  28. [Bioinformatics 2023] Molecular Property Prediction by Contrastive Learning with Attention-Guided Positive Sample Selection [paper]
  29. [AISTAT 2023] Learning Robust Graph Neural Networks with Limited Supervision [paper]
  30. [TNNLS 2023] Demystifying and Mitigating Bias for Node Representation Learning [paper]
  31. [BICTA 2023] Graph Contrastive Learning with Intrinsic Augmentations [paper]
  32. [arXiv 2023] GraphMAE2: A Decoding-Enhanced Masked Self-Supervised Graph Learner [paper]
  33. [arXiv 2023] Adversarial Hard Negative Generation for Complementary Graph Contrastive Learning [paper]
  34. [INS 2023] INS-GNN: Improving Graph Imbalance Learning with Self-Supervision [paper]
  35. [TNNLS 2023] Dual Contrastive Learning Network for Graph Clustering [paper]
  36. [arXiv 2023] RARE: Robust Masked Graph Autoencoder [paper]
  37. [TKDE 2023] Maximizing Mutual Information Across Feature and Topology Views for Representing Graphs [paper]
  38. [arXiv 2023] When to Pre-Train Graph Neural Networks? An Answer from Data Generation Perspective! [paper]
  39. [KBS 2023] Class-homophilic-based data augmentation for improving graph neural networks [paper]
  40. [arXiv 2023] Structural Imbalance Aware Graph Augmentation Learning [paper]
  41. [arXiv 2023] Hybrid Augmented Automated Graph Contrastive Learning [paper]
  42. [arXiv 2023] Decoupling Graph Neural Network with Contrastive Learning for Fraud Detection [paper]
  43. [arXiv 2023] Data-Centric Learning from Unlabeled Graphs with Diffusion Model [paper]
  44. [TPAMI 2023] Unsupervised Learning of Graph Matching With Mixture of Modes Via Discrepancy Minimization [paper]
  45. [arXiv 2023] NESS: Learning Node Embeddings from Static SubGraphs [paper]
  46. [Sensors 2023] A Robust Automated Analog Circuits Classification Involving a Graph Neural Network and a Novel Data Augmentation Strategy [paper]
  47. [arXiv 2023] Contrastive knowledge integrated graph neural networks for Chinese medical text classification [paper]
  48. [arXiv 2023] CHGNN: A Semi-Supervised Contrastive Hypergraph Learning Network [paper]
  49. [arXiv 2023] Contrastive Learning under Heterophily [paper]
  50. [arXiv 2023] Structure-Aware Group Discrimination with Adaptive-View Graph Encoder: A Fast Graph Contrastive Learning Framework [paper]
  51. [TNNLS 2023] Self-supervised Learning IoT Device Features with Graph Contrastive Neural Network for Device Classification in Social Internet of Things [paper]
  52. [TKDE 2023] Feature-Level Deeper Self-Attention Network With Contrastive Learning for Sequential Recommendation [paper]
  53. [AAAI 2023] Recommend What to Cache: a Simple Self-supervised Graph-based Recommendation Framework for Edge Caching Network [paper]
  54. [arXiv 2023] Self-Supervised Interest Transfer Network via Prototypical Contrastive Learning for Recommendation [paper]
  55. [arXiv 2023] SGL-PT: A Strong Graph Learner with Graph Prompt Tuning [paper]
  56. [CIS 2023] SimGRL: a simple self-supervised graph representation learning framework via triplets [paper]
  57. [WSDM 2023] Self-Supervised Group Graph Collaborative Filtering for Group Recommendation [paper]
  58. [WSDM 2023] S2GAE: Self-Supervised Graph Autoencoders are Generalizable Learners with Graph Masking [paper]
  59. [WSDM 2023] Heterogeneous Graph Contrastive Learning for Recommendation [paper]
  60. [Nature Communications Chemistry] Hierarchical Molecular Graph Self-Supervised Learning for property prediction [paper]
  61. [arXiv 2023] Wiener Graph Deconvolutional Network Improves Graph Self-Supervised Learning [paper]
  62. [arXiv 2023] Heterogeneous Social Event Detection via Hyperbolic Graph Representations [paper]
  63. [arXiv 2023] LightGCL: Simple Yet Effective Graph Contrastive Learning for Recommendation [paper]
  64. [arXiv 2023] GraphPrompt: Unifying Pre-Training and Downstream Tasks for Graph Neural Networks [paper]
  65. [Pattern Recognition] Dual-Channel Graph Contrastive Learning for Self-Supervised Graph-Level Representation Learning [paper]
  66. [NCA 2023] Self-supervised contrastive learning for heterogeneous graph based on multi-pretext tasks [paper]
  67. [arXiv 2023] STERLING: Synergistic Representation Learning on Bipartite Graphs [paper]
  68. [ICLR 2023] Multi-task Self-supervised Graph Neural Networks Enable Stronger Task Generalization [paper]
  69. [WBD 2023] Mixed-Order Heterogeneous Graph Pre-training for Cold-Start Recommendation [paper]
  70. [arXiv 2023] Explainable Action Prediction through Self-Supervision on Scene Graphs [paper]
  71. [arXiv 2023] Spectral Augmentations for Graph Contrastive Learning [paper]
  72. [RS 2023] Representing Spatial Data with Graph Contrastive Learning [paper]
  73. [ACLF 2023] KE-GCL: Knowledge Enhanced Graph Contrastive Learning for Commonsense Question Answering [paper]
  74. [TNNLS 2023] GRLC: Graph Representation Learning With Constraints [paper]
  75. [ESA 2023] Contrastive graph clustering with adaptive filter [paper]
  76. [arXiv 2023] Biomedical Interaction Prediction with Adaptive Line Graph Contrastive Learning [paper]
  77. [arXiv 2023] Affinity Uncertainty-based Hard Negative Mining in Graph Contrastive Learning [paper]
  78. [arXiv 2023] Self-supervised Semi-implicit Graph Variational Auto-encoders with Masking [paper]
  79. [ACM Trans. Web 2023] Contrastive Graph Similarity Networks [paper]
  80. [ICBD 2023] Predictive Masking for Semi-Supervised Graph Contrastive Learning [paper]
  81. [TNNLS 2023] Graph Representation Learning With Adaptive Metric [paper]
  82. [RAL 2023] Self-Supervised Local Topology Representation for Random Cluster Matching [paper]
  83. [KBS 2023] CrysGNN: Distilling pre-trained knowledge to enhance property prediction for crystalline materials [paper]
  84. [Entropy 2023] A Semantic-Enhancement-Based Social Network User-Alignment Algorithm [paper]
  85. [KBS 2023] Cross-view temporal graph contrastive learning for session-based recommendation [paper]
  86. [PR 2023] Robust Image Clustering via Context-aware Contrastive Graph Learning [paper]
  87. [ICMLCS 2023] AP-GCL: Adversarial Perturbation on Graph Contrastive Learning [paper]
  88. [arXiv 2023] Signed Directed Graph Contrastive Learning with Laplacian Augmentation [paper]
  89. [OJCS 2023] SC-FGCL: Self-adaptive Cluster-based Federal Graph Contrastive Learning [paper]
  90. [BIB 2023] CasANGCL: pre-training and fine-tuning model based on cascaded attention network and graph contrastive learning for molecular property prediction [paper]
  91. [AAAI 2023] Spectral Feature Augmentation for Graph Contrastive Learning and Beyond [paper]
  92. [Entropy 2023] Self-Supervised Node Classification with Strategy and Actively Selected Labeled Set [paper]

Year 2022

  1. [NeurIPS 2022] Generalized Laplacian Eigenmaps [paper]
  2. [KDD 2022] COSTA: Covariance-Preserving Feature Augmentation for Graph Contrastive Learning [paper]
  3. [ITBE 2022] Contrastive Multi-view Composite Graph Convolutional Networks Based on Contribution Learning for Autism Spectrum Disorder Classification [paper]
  4. [IEEE Access 2022] ROME: A Graph Contrastive Multi-view Framework from Hyperbolic Angular Space for MOOCs Recommendation [paper]
  5. [arXiv 2022] Heterogeneous Graph Contrastive Learning with Meta-path Contexts and Weighted Negative Samples [paper]
  6. [arXiv 2022] MolCPT: Molecule Continuous Prompt Tuning to Generalize Molecular Representation Learning [paper]
  7. [arXiv 2022] Toward Improved Generalization: Meta Transfer of Self-supervised Knowledge on Graphs [paper]
  8. [arXiv 2022] Coarse-to-Fine Contrastive Learning on Graphs [paper]
  9. [arXiv 2022] MA-GCL: Model Augmentation Tricks for Graph Contrastive Learning [paper]
  10. [arXiv 2022] Mul-GAD: a semi-supervised graph anomaly detection framework via aggregating multi-view information [paper]
  11. [arXiv 2022] Localized Contrastive Learning on Graphs [paper]
  12. [arXiv 2022] Alleviating neighbor bias: augmenting graph self-supervise learning with structural equivalent positive samples [paper]
  13. [arXiv 2022] Self-supervised Graph Representation Learning for Black Market Account Detection [paper]
  14. [arXiv 2022] Contrastive Deep Graph Clustering with Learnable Augmentation [paper]
  15. [arXiv 2022] Graph Anomaly Detection via Multi-Scale Contrastive Learning Networks with Augmented View [paper]
  16. [arXiv 2022] Self Supervised Clustering of Traffic Scenes using Graph Representations [paper]
  17. [arXiv 2022] Graph Contrastive Learning for Materials [paper]
  18. [arXiv 2022] Link Prediction with Non-Contrastive Learning [paper]
  19. [IJMIR 2022] TCKGE: Transformers with contrastive learning for knowledge graph embedding [paper]
  20. [arXiv 2022] Beyond Smoothing: Unsupervised Graph Representation Learning with Edge Heterophily Discriminating [paper]
  21. [Neural Networks 2022] Unsupervised graph-level representation learning with hierarchical contrasts [paper]
  22. [arXiv 2022] Relation-dependent Contrastive Learning with Cluster Sampling for Inductive Relation Prediction [paper]
  23. [arXiv 2022] Relational Symmetry based Knowledge Graph Contrastive Learning [paper]
  24. [arXiv 2022] Towards Generalizable Graph Contrastive Learning: An Information Theory Perspective [paper]
  25. [arXiv 2022] Can Single-Pass Contrastive Learning Work for Both Homophilic and Heterophilic Graph? [paper]
  26. [SIGSPATIAL 2022] When Do Contrastive Learning Signals Help Spatio-Temporal Graph Forecasting? [paper]
  27. [Scientific Reports 2022] Deep graph level anomaly detection with contrastive learning [paper]
  28. [TII 2022] Semi-supervised machine fault diagnosis fusing unsupervised graph contrastive learning [paper]
  29. [KBS 2022] SMGCL: Semi-supervised Multi-view Graph Contrastive Learning [paper]
  30. [arXiv 2022] Unsupervised Graph Contrastive Learning with Data Augmentation for Malware Classification [paper]
  31. [IJCRS 2022] Multi-scale Subgraph Contrastive Learning for Link Prediction [paper]
  32. [arXiv 2022] Flaky Performances when Pretraining on Relational Databases [paper]
  33. [arXiv 2022] GOOD-D: On Unsupervised Graph Out-Of-Distribution Detection [paper]
  34. [ATKDD 2022] Ada-MIP: Adaptive Self-supervised Graph Representation Learning via Mutual Information and Proximity Optimization [paper]
  35. [arXiv 2022] Graph Contrastive Learning with Implicit Augmentations [paper]
  36. [Information Sciences 2022] Contrastive Graph Neural Network-based Camouflaged Fraud Detector [paper]
  37. [arXiv 2022] DyG2Vec: Representation Learning for Dynamic Graphs with Self-Supervision [paper]
  38. [arXiv 2022] Federated Graph Representation Learning using Self-Supervision [paper]
  39. [arXiv 2022] Benchmark of Self-supervised Graph Neural Networks [paper]
  40. [arXiv 2022] Line Graph Contrastive Learning for Link Prediction [paper]
  41. [TDSC 2022] FewM-HGCL: Few-Shot Malware Variants Detection Via Heterogeneous Graph Contrastive Learning [paper]
  42. [arXiv 2022] Self-supervised Graph-based Point-of-interest Recommendation [paper]
  43. [IJMLC 2022] Hybrid sampling-based contrastive learning for imbalanced node classification [paper]
  44. [CIKM 2022] Temporality-and Frequency-aware Graph Contrastive Learning for Temporal Network [paper]
  45. [CIKM 2022] Towards Self-supervised Learning on Graphs with Heterophily [paper]
  46. [ISWC 2022] HCL: Improving Graph Representation with Hierarchical Contrastive Learning [paper]
  47. [CIKM 2022] Cognize Yourself: Graph Pre-Training via Core Graph Cognizing and Differentiating [paper]
  48. [CIKM 2022] AdaGCL: Adaptive Subgraph Contrastive Learning to Generalize Large-scale Graph Training [paper]
  49. [CIKM 2022] Look Twice as Much as You Say: Scene Graph Contrastive Learning for Self-Supervised Image Caption Generation [paper]
  50. [CIKM 2022] Malicious Repositories Detection with Adversarial Heterogeneous Graph Contrastive Learning [paper]
  51. [ICEBE 2022] Self-supervised Heterogeneous Graph Pre-training Based on Structural Clustering [paper]
  52. [arXiv 2022] Self-supervised Heterogeneous Graph Pre-training Based on Structural Clustering [paper]
  53. [NeurIPS 2022] Augmentations in Hypergraph Contrastive Learning: Fabricated and Generative [paper] [code]
  54. [ICCL 2022] Modeling Intra-and Inter-Modal Relations: Hierarchical Graph Contrastive Learning for Multimodal Sentiment Analysis [paper]
  55. [TKDE 2022] Adversarial Contrastive Learning for Evidence-aware Fake News Detection with Graph Neural Networks [paper]
  56. [MM 2022] Simple Self-supervised Multiplex Graph Representation Learning [paper]
  57. [TMM 2022] Self-consistent Contrastive Attributed Graph Clustering with Pseudo-label Prompt [paper]
  58. [NeurIPS 2022] Uncovering the Structural Fairness in Graph Contrastive Learning [paper]
  59. [NeurIPS 2022] Revisiting Graph Contrastive Learning from the Perspective of Graph Spectrum [paper]
  60. [arXiv 2022] Heterogeneous Graph Contrastive Multi-view Learning [paper]
  61. [arXiv 2022] Automated Graph Self-supervised Learning via Multi-teacher Knowledge Distillation [paper]
  62. [arXiv 2022] Prompt Tuning for Graph Neural Networks [paper]
  63. [arXiv 2022] Improving Molecular Pretraining with Complementary Featurizations [paper]
  64. [arXiv 2022] Graph Soft-Contrastive Learning via Neighborhood Ranking [paper]
  65. [EDBT 2022] Spatial Structure-Aware Road Network Embedding via Graph Contrastive Learning [paper]
  66. [arXiv 2022] Adversarial Cross-View Disentangled Graph Contrastive Learning [paper]
  67. [Neurocomputing 2022] Motifs-based Recommender System via Hypergraph Convolution and Contrastive Learning [paper]
  68. [TNNLS 2022] Graph Representation Learning for Large-Scale Neuronal Morphological Analysis [paper]
  69. [ECML-PKDD 2022] Self-supervised Graph Learning with Segmented Graph Channels [paper]
  70. [ECML-PKDD 2022] Graph Contrastive Learning with Adaptive Augmentation for Recommendation [paper]
  71. [CIKM 2022] Contrastive Knowledge Graph Error Detection [paper]
  72. [TKDE 2022] Disentangled Graph Contrastive Learning With Independence Promotion [paper]
  73. [ECML-PKDD 2022] Supervised Graph Contrastive Learning for Few-shot Node Classification [paper]
  74. [Information Sciences 2022] Graph Prototypical Contrastive Learning [paper]
  75. [ICAAN 2022] Knowledge-Aware Self-supervised Graph Representation Learning for Recommendation [paper]
  76. [arXiv 2022] Self-supervised Representation Learning on Electronic Health Records with Graph Kernel Infomax [paper]
  77. [arXiv 2022] Disentangled Graph Contrastive Learning for Review-based Recommendation [paper]
  78. [arXiv 2022] Contrastive Learning with Heterogeneous Graph Attention Networks on Short Text Classification [paper]
  79. [arXiv 2022] Features Based Adaptive Augmentation for Graph Contrastive Learning [paper]
  80. [TKDE 2022] GCCAD: Graph Contrastive Learning for Anomaly Detection [paper]
  81. [JCIM 2022] SMICLR: Contrastive Learning on Multiple Molecular Representations for Semisupervised and Unsupervised Representation Learning [paper]
  82. [arXiv 2022] XSimGCL: Towards Extremely Simple Graph Contrastive Learning for Recommendation [paper][code]
  83. [CIKM 2022] Relational Self-Supervised Learning on Graphs [paper][code]
  84. [Information Sciences 2022] Self-Supervised Graph Representation Learning via Positive Mining [paper]
  85. [arXiv 2022] Heterogeneous Graph Masked Autoencoders [paper]
  86. [arXiv 2022] KRACL: Contrastive Learning with Graph Context Modeling for Sparse Knowledge Graph Completion [paper]
  87. [arXiv 2022] R'enyiCL: Contrastive Representation Learning with Skew R'enyi Divergence [paper]
  88. [TNNLS 2022] Prototypical Graph Contrastive Learning [paper]
  89. [KDD 2022] Mining Spatio-Temporal Relations via Self-Paced Graph Contrastive Learning [paper]
  90. [KDD 2022] Rep2Vec: Repository Embedding via Heterogeneous Graph Adversarial Contrastive Learning [paper]
  91. [arXiv 2022] Deep Contrastive Multiview Network Embedding [paper]
  92. [arXiv 2022] Analyzing Data-Centric Properties for Contrastive Learning on Graphs [paper]
  93. [KDD 2022] Mask and Reason: Pre-Training Knowledge Graph Transformers for Complex Logical Queries [paper]
  94. [arXiv 2022] Generative Subgraph Contrast for Self-Supervised Graph Representation Learning [paper]
  95. [IJCAI 2022] Graph Masked Autoencoder Enhanced Predictor for Neural Architecture Search [paper]
  96. [IJCAI 2022] Proximity Enhanced Graph Neural Networks with Channel Contrast [paper]
  97. [IJCAI 2022] Rethinking the Promotion Brought by Contrastive Learning to Semi-Supervised Node Classification [paper]
  98. [IPM 2022] HCNA: Hyperbolic Contrastive Learning Framework for Self-Supervised Network Alignment [paper]
  99. [arXiv 2022] 3D Equivariant Molecular Graph Pretraining [paper]
  100. [arXiv 2022] Unified 2D and 3D Pre-Training of Molecular Representations [paper]
  101. [arXiv 2022] Does GNN Pretraining Help Molecular Representation? [paper]
  102. [arXiv 2022] Latent Augmentation For Better Graph Self-Supervised Learning [paper]
  103. [arXiv 2022] Geometry Contrastive Learning on Heterogeneous Graphs [paper]
  104. [KIS 2022] Self-supervised role learning for graph neural networks [paper]
  105. [JFCST 2022] Graph Neural Network Defense Combined with Contrastive Learning [paper]
  106. [ICMLW 2022] Evaluating Self-Supervised Learned Molecular Graphs [paper]
  107. [KDD 2022] Reliable Representations Make A Stronger Defender: Unsupervised Structure Refinement for Robust GNN [paper]
  108. [ICMLW 2022] Featurizations Matter: A Multiview Contrastive Learning Approach to Molecular Pretraining [paper]
  109. [bioRiv 2022] Cross-modal Graph Contrastive Learning with Cellular Images [paper]
  110. [Information Sciences 2022] A new self-supervised task on graphs: Geodesic distance prediction [paper]
  111. [arXiv 2022] Evaluating Self-Supervised Learning for Molecular Graph Embeddings [paper]
  112. [arXiv 2022] Evaluating Graph Generative Models with Contrastively Learned Features [paper]
  113. [arXiv 2022] COSTA: Covariance-Preserving Feature Augmentation for Graph Contrastive Learning [paper]
  114. [arXiv 2022] Decoupled Self-supervised Learning for Non-Homophilous Graphs [paper]
  115. [arXiv 2022] Interpolation-based Correlation Reduction Network for Semi-Supervised Graph Learning [paper]
  116. [arXiv 2022] Rethinking and Scaling Up Graph Contrastive Learning: An Extremely Efficient Approach with Group Discrimination [paper]
  117. [arXiv 2022] KPGT: Knowledge-Guided Pre-training of Graph Transformer for Molecular Property Prediction [paper]
  118. [CVPR 2022] Robust Optimization As Data Augmentation for Large-Scale Graphs [paper]
  119. [arXiv 2022] COIN: Co-Cluster Infomax for Bipartite Graphs [paper]
  120. [TSIPN 2022] Fair Contrastive Learning on Graphs [paper]
  121. [arXiv 2022] I’m Me, We’re Us, and I’m Us: Tri-directional Contrastive Learning on Hypergraphs [paper]
  122. [TNNLS 2022] CLEAR: Cluster-Enhanced Contrast for Self-Supervised Graph Representation Learning [paper]
  123. [arXiv 2022] Let Invariant Rationale Discovery Inspire Graph Contrastive Learning [paper]
  124. [arXiv 2022] Omni-Granular Ego-Semantic Propagation for Self-Supervised Graph Representation Learning [paper]
  125. [arXiv 2022] Improving Subgraph Representation Learning via Multi-View Augmentation [paper]
  126. [arXiv 2022] Triangular Contrastive Learning on Molecular Graphs [paper]
  127. [KDD 2022] GraphMAE: Self-supervised Masked Graph Autoencoders [paper]
  128. [arXiv 2022] MaskGAE: Masked Graph Modeling Meets Graph Autoencoders [paper]
  129. [ICML 2022] Understanding Limitations of Unsupervised Graph Representation Learning from a Data-Dependent Perspective [paper]
  130. [arXiv 2022] Towards Explanation for Unsupervised Graph-Level Representation Learning [paper]
  131. [arXiv 2022] ImGCL: Revisiting Graph Contrastive Learning on Imbalanced Node Classification [paper]
  132. [TNNLS 2022] Collaborative Decision-Reinforced Self-Supervision for Attributed Graph Clustering [paper]
  133. [arXiv 2022] Contrastive Graph Learning with Graph Convolutional Networks [paper]
  134. [TISPN 2022] Fair Contrastive Learning on Graphs [paper]
  135. [arXiv 2022] SLAPS: Self-Supervision Improves Structure Learning for Graph Neural Networks [paper]
  136. [arXiv 2022] HCL: Hybrid Contrastive Learning for Graph-based Recommendation [paper]
  137. [arXiv 2022] Representation learning with function call graph transformations for malware open set recognition [paper]
  138. [arXiv 2022] Simple Contrastive Graph Clustering [paper]
  139. [NCA 2022] Self-supervised graph representation learning using multi-scale subgraph views contrast [paper]
  140. [ACL 2022] JointCL: A Joint Contrastive Learning Framework for Zero-Shot Stance Detection [paper]
  141. [IPM 2022] Contrastive Graph Convolutional Networks with adaptive augmentation for text classification [paper]
  142. [PAKDD 2022] Contrastive Attributed Network Anomaly Detection with Data Augmentation [paper]
  143. [DASFAA 2022] CSGNN: Improving Graph Neural Networks with Contrastive Semi-supervised Learning [paper]
  144. [arXiv 2022] Dynamic Graph Representation Based on Temporal and Contextual Contrasting [paper]
  145. [DASFAA 2022] Diffusion-Based Graph Contrastive Learning for Recommendation with Implicit Feedback [paper]
  146. [arXiv 2022] FastGCL: Fast Self-Supervised Learning on Graphs via Contrastive Neighborhood Aggregation [paper]
  147. [arXiv 2022] RoSA: A Robust Self-Aligned Framework for Node-Node Graph Contrastive Learning [paper]
  148. [arXiv 2022] Heterogeneous Graph Neural Networks using Self-supervised Reciprocally Contrastive Learning [paper]
  149. [WSDM 2022] JGCL: Joint Self-Supervised and Supervised Graph Contrastive Learning [paper]
  150. [AAAI 2022] SAIL: Self-Augmented Graph Contrastive Learning [paper]
  151. [ICASSP 2022] Graph Fine-Grained Contrastive Representation Learning [paper]
  152. [arXiv 2022] SCGC: Self-Supervised Contrastive Graph Clustering [paper]
  153. [arXiv 2022] A Content-First Benchmark for Self-Supervised Graph Representation Learning [paper]
  154. [SIGIR 2022] Hypergraph Contrastive Collaborative Filtering [paper]
  155. [WWW 2022] Rumor Detection on Social Media with Graph Adversarial Contrastive Learning [paper]
  156. [arXiv 2022] A Review-aware Graph Contrastive Learning Framework for Recommendation [paper]
  157. [WWW 2022] Robust Self-Supervised Structural Graph Neural Network for Social Network Prediction [paper]
  158. [arXiv 2022] CGC: Contrastive Graph Clustering for Community Detection and Tracking [paper]
  159. [TCyber 2022] Multiview Deep Graph Infomax to Achieve Unsupervised Graph Embedding [paper]
  160. [arXiv 2022] MVGCNMDA: Multi-view Graph Augmentation Convolutional Network for Uncovering Disease-Related Microbes [paper]
  161. [arXiv 2022] CERES: Pretraining of Graph-Conditioned Transformer for Semi-Structured Session Data [paper]
  162. [arXiv 2022] Self-Supervised Graph Neural Network for Multi-Source Domain Adaptation [paper]
  163. [SIGIR 2022] Are Graph Augmentations Necessary? Simple Graph Contrastive Learning for Recommendation [paper][code]
  164. [arXiv 2022] Explanation Graph Generation via Pre-trained Language Models: An Empirical Study with Contrastive Learning [paper]
  165. [arXiv 2022] Augmentation-Free Graph Contrastive Learning [paper]
  166. [TCybern 2022] Link-Information Augmented Twin Autoencoders for Network Denoising [paper]
  167. [arXiv 2022] Node Representation Learning in Graph via Node-to-Neighbourhood Mutual Information Maximization [paper]
  168. [arXiv 2022] GraphCoCo: Graph Complementary Contrastive Learning [paper]
  169. [arXiv 2022] Unsupervised Heterophilous Network Embedding via r-Ego Network Discrimination [paper]
  170. [Bioinformatics 2022] Supervised Graph Co-contrastive Learning for Drug-Target Interaction Prediction [paper]
  171. [arXiv 2022] Supervised Contrastive Learning with Structure Inference for Graph Classification [paper]
  172. [arXiv 2022] Defending Graph Convolutional Networks against Dynamic Graph Perturbations via Bayesian Self-supervision [paper]
  173. [arXiv 2022] Analyzing Heterogeneous Networks with Missing Attributes by Unsupervised Contrastive Learning [paper]
  174. [arXiv 2022] Improving Molecular Contrastive Learning via Faulty Negative Mitigation and Decomposed Fragment Contrast [paper]
  175. [arXiv 2022] Contrastive Meta Learning with Behavior Multiplicity for Recommendation [paper][code]
  176. [arXiv 2022] Fair Node Representation Learning via Adaptive Data Augmentation [paper]
  177. [arXiv 2022] Learning Graph Augmentations to Learn Graph Representations [paper][code]
  178. [arXiv 2022] Graph Data Augmentation for Graph Machine Learning: A Survey [paper]
  179. [arXiv 2022] Data Augmentation for Deep Graph Learning: A Survey [paper]
  180. [arXiv 2022] Adversarial Graph Contrastive Learning with Information Regularization [paper]
  181. [arXiv 2022] SimGRACE: A Simple Framework for Graph Contrastive Learning without Data Augmentation [paper]
  182. [NeurIPS 2022] Graph Self-supervised Learning with Accurate Discrepancy Learning [paper]
  183. [arXiv 2022] Learning Robust Representation through Graph Adversarial Contrastive Learning [paper]
  184. [arXiv 2022] Self-supervised Graphs for Audio Representation Learning with Limited Labeled Data [paper]
  185. [arXiv 2022] Link Prediction with Contextualized Self-Supervision [paper]
  186. [arXiv 2022] Dual Space Graph Contrastive Learning [paper]
  187. [arXiv 2022] Unsupervised Graph Poisoning Attack via Contrastive Loss Back-propagation [paper]
  188. [arXiv 2022] From Unsupervised to Few-shot Graph Anomaly Detection: A Multi-scale Contrastive Learning Approach [paper]
  189. [arXiv 2022] Dual Space Graph Contrastive Learning [paper]
  190. [arXiv 2022] Structure-Enhanced Heterogeneous Graph Contrastive Learning [paper]
  191. [bioRxiv 2022] Towards Effective and Generalizable Fine-tuning for Pre-trained Molecular Graph Models [paper]
  192. [SDM 2022] Neural Graph Matching for Pre-training Graph Neural Networks [paper] [code]
  193. [TNNLS 2022] Analyzing Heterogeneous Networks with Missing Attributes by Unsupervised Contrastive Learning [paper]
  194. [WWW 2022] Improving Graph Collaborative Filtering with Neighborhood-enriched Contrastive Learning [paper] [code]
  195. [WWW 2022] ClusterSCL: Cluster-Aware Supervised Contrastive Learning on Graphs [paper]
  196. [ICLR 2022] Large-Scale Representation Learning on Graphs via Bootstrapping [paper][Code]
  197. [ICLR 2022] Automated Self-Supervised Learning for Graphs [paper] [code]
  198. [AAAI 2022] Self-supervised Graph Neural Networks via Diverse and Interactive Message Passing [paper]
  199. [AAAI 2022] Augmentation-Free Self-Supervised Learning on Graphs [paper][code]
  200. [AAAI 2022] Molecular Contrastive Learning with Chemical Element Knowledge Graph [paper]
  201. [AAAI 2022] Deep Graph Clustering via Dual Correlation Reduction [paper][code]
  202. [AAAI 2022] Simple Unsupervised Graph Representation Learning [paper]
  203. [WSDM 2022] Bringing Your Own View: Graph Contrastive Learning without Prefabricated Data Augmentations [paper] [code]
  204. [ICOIN 2022] Adaptive Self-Supervised Graph Representation Learning [paper]
  205. [NPL 2022] How Does Bayesian Noisy Self-Supervision Defend Graph Convolutional Networks? [paper]
  206. [SIGIR 2022] Knowledge Graph Contrastive Learning for Recommendation [paper] [code]

Year 2021

  1. [AAAI 2021] Self-supervised hypergraph convolutional networks for session-based recommendation [paper]
  2. [arXiv 2021] Pre-training Graph Neural Network for Cross Domain Recommendation [paper]
  3. [arXiv 2021] Augmentations in Graph Contrastive Learning: Current Methodological Flaws & Towards Better Practices [paper]
  4. [arXiv 2021] Collaborative Graph Contrastive Learning: Data Augmentation Composition May Not be Necessary for Graph Representation Learning [paper]
  5. [arXiv 2021] Multi-task Self-distillation for Graph-based Semi-Supervised Learning [paper]
  6. [arXiv 2021] Subgraph Contrastive Link Representation Learning [paper]
  7. [arXiv 2021] Multilayer Graph Contrastive Clustering Network [paper]
  8. [arXiv 2021] Graph Representation Learning via Contrasting Cluster Assignments [paper]
  9. [arXiv 2021] Graph-wise Common Latent Factor Extraction for Unsupervised Graph Representation Learning [paper]
  10. [arXiv 2021] Bayesian Graph Contrastive Learning [paper]
  11. [arXiv 2021] TCGL: Temporal Contrastive Graph for Self-supervised Video Representation Learning [paper]
  12. [arXiv 2021] Graph Communal Contrastive Learning [paper]
  13. [arXiv 2021] Self-supervised Contrastive Attributed Graph Clustering [paper]
  14. [arXiv 2021] Self-Supervised Learning for Molecular Property Prediction [paper]
  15. [arXiv 2021] RPT: Toward Transferable Model on Heterogeneous Researcher Data via Pre-Training [paper]
  16. [arXiv 2021] Scalable Consistency Training for Graph Neural Networks via Self-Ensemble Self-Distillation [paper]
  17. [arXiv 2021] PRE-TRAINING MOLECULAR GRAPH REPRESENTATION WITH 3D GEOMETRY [paper] [code]
  18. [arXiv 2021] 3D Infomax improves GNNs for Molecular Property Prediction [paper] [code]
  19. [arXiv 2021] Motif-based Graph Self-Supervised Learning for Molecular Property Prediction [paper]
  20. [arXiv 2021] Debiased Graph Contrastive Learning [paper]
  21. [arXiv 2021] 3D-Transformer: Molecular Representation with Transformer in 3D Space [paper]
  22. [arXiv 2021] Contrastive Pre-Training of GNNs on Heterogeneous Graphs [paper]
  23. [arXiv 2021] Contrastive Graph Convolutional Networks for Hardware Trojan Detection in Third Party IP Cores [paper]
  24. [arXiv 2021] GeomGCL: Geometric Graph Contrastive Learning for Molecular Property Prediction [paper]
  25. [arXiv 2021] Adaptive Multi-layer Contrastive Graph Neural Networks [paper]
  26. [arXiv 2021] Graph-MVP: Multi-View Prototypical Contrastive Learning for Multiplex Graphs [paper]
  27. [arXiv 2021] Hyper Meta-Path Contrastive Learning for Multi-Behavior Recommendation [paper]
  28. [arXiv 2021] Negative Sampling Strategies for Contrastive Self-Supervised Learning of Graph Representations [paper]
  29. [arXiv 2021] Structure-Aware Hard Negative Mining for Heterogeneous Graph Contrastive Learning [paper]
  30. [arXiv 2021] Spatio-Temporal Graph Contrastive Learning [paper]
  31. [arXiv 2021] Generative and Contrastive Self-Supervised Learning for Graph Anomaly Detection [paper]
  32. [Arxiv 2021] Self-Supervised Multi-Channel Hypergraph Convolutional Network for Social Recommendation [paper] [code]
  33. [arXiv 2021] GCCAD: Graph Contrastive Coding for Anomaly Detection [paper]
  34. [arXiv 2021] Contrastive Self-supervised Sequential Recommendation with Robust Augmentation [paper]
  35. [arXiv 2021] RRLFSOR: An Efficient Self-Supervised Learning Strategy of Graph Convolutional Networks [paper]
  36. [arXiv 2021] Group Contrastive Self-Supervised Learning on Graphs [paper]
  37. [arXiv 2021] Multi-Level Graph Contrastive Learning [paper]
  38. [arXiv 2021] From Canonical Correlation Analysis to Self-supervised Graph Neural Networks [paper] [code]
  39. [arXiv 2021] Evaluating Modules in Graph Contrastive Learning [paper] [code]
  40. [arXiv 2021] Prototypical Graph Contrastive Learning [paper]
  41. [arXiv 2021] Fairness-Aware Node Representation Learning [paper]
  42. [arXiv 2021] Adversarial Graph Augmentation to Improve Graph Contrastive Learning [paper]
  43. [arXiv 2021] Graph Barlow Twins: A self-supervised representation learning framework for graphs [paper]
  44. [arXiv 2021] Self-Supervised Graph Learning with Proximity-based Views and Channel Contrast [paper]
  45. [arXiv 2021] Self-supervised on Graphs: Contrastive, Generative,or Predictive [paper]
  46. [arXiv 2021] FedGL: Federated Graph Learning Framework with Global Self-Supervision [paper]
  47. [arXiv 2021] Hop-Count Based Self-Supervised Anomaly Detection on Attributed Networks [paper]
  48. [arXiv 2021] Representation Learning for Networks in Biology and Medicine: Advancements, Challenges, and Opportunities [paper]
  49. [arXiv 2021] Graph Representation Learning by Ensemble Aggregating Subgraphs via Mutual Information Maximization [paper]
  50. [arXiv 2021] Drug Target Prediction Using Graph Representation Learning via Substructures Contrast [paper]
  51. [arXiv 2021] Self-supervised Auxiliary Learning for Graph Neural Networks via Meta-Learning [paper]
  52. [arXiv 2021] Graph Self-Supervised Learning: A Survey [paper]
  53. [arXiv 2021] Towards Robust Graph Contrastive Learning [paper]
  54. [arXiv 2021] Pre-Training on Dynamic Graph Neural Networks [paper]
  55. [arXiv 2021] Self-Supervised Learning of Graph Neural Networks: A Unified Review [paper]
  56. [Openreview 2021] An Empirical Study of Graph Contrastive Learning [paper]
  57. [BIBM 2021] SGAT: a Self-supervised Graph Attention Network for Biomedical Relation Extraction [paper]
  58. [BIBM 2021] Molecular Graph Contrastive Learning with Parameterized Explainable Augmentations [paper]
  59. [NeurIPS 2021 Workshop] Self-Supervised GNN that Jointly Learns to Augment [paper]
  60. [NeurIPS 2021 Workshop] Contrastive Embedding of Structured Space for Bayesian Optimisation [paper]
  61. [NeurIPS 2021] Enhancing Hyperbolic Graph Embeddings via Contrastive Learning [paper]
  62. [NeurIPS 2021] Graph Adversarial Self-Supervised Learning [paper]
  63. [NeurIPS 2021] Contrastive laplacian eigenmaps [paper]
  64. [NeurIPS 2021] Directed Graph Contrastive Learning [paper][code]
  65. [NeurIPS 2021] Multi-view Contrastive Graph Clustering [paper][code]
  66. [NeurIPS 2021] From Canonical Correlation Analysis to Self-supervised Graph Neural Networks [paper][code]
  67. [NeurIPS 2021] InfoGCL: Information-Aware Graph Contrastive Learning [paper]
  68. [NeurIPS 2021] Adversarial Graph Augmentation to Improve Graph Contrastive Learning [paper][code]
  69. [NeurIPS 2021] Disentangled Contrastive Learning on Graphs [paper]
  70. [CIKM 2021] Multimodal Graph Meta Contrastive Learning [paper]
  71. [CIKM 2021] Self-supervised Representation Learning on Dynamic Graphs [paper]
  72. [CIKM 2021] Rectifying Pseudo Labels: Iterative Feature Clustering for Graph Representation Learning [paper]
  73. [CIKM 2021] SGCL: Contrastive Representation Learning for Signed Graphs [paper]
  74. [CIKM 2021] Semi-Supervised and Self-Supervised Classification with Multi-View Graph Neural Networks [paper]
  75. [CIKM 2021] Social Recommendation with Self-Supervised Metagraph Informax Network [paper] [code]
  76. [IJCAI 2021] Multi-Scale Contrastive Siamese Networks for Self-Supervised Graph Representation Learning [paper]
  77. [IJCAI 2021] Pairwise Half-graph Discrimination: A Simple Graph-level Self-supervised Strategy for Pre-training Graph Neural Networks [paper]
  78. [IJCAI 2021] CuCo: Graph Representation with Curriculum Contrastive Learning [paper]
  79. [IJCAI 2021] Graph Debiased Contrastive Learning with Joint Representation Clustering [paper]
  80. [IJCAI 2021] CSGNN: Contrastive Self-Supervised Graph Neural Network for Molecular Interaction Prediction [paper]
  81. [KDD 2021] MoCL: Data-driven Molecular Fingerprint via Knowledge-aware Contrastive Learning from Molecular Graph [paper] [code]
  82. [KDD 2021] Contrastive Multi-View Multiplex Network Embedding with Applications to Robust Network Alignment [paper]
  83. [KDD 2021] Adaptive Transfer Learning on Graph Neural Networks [paper]
  84. πŸ”₯[ICML 2021] Graph Contrastive Learning Automated [paper] [code]
  85. [ICML 2021] Self-supervised Graph-level Representation Learning with Local and Global Structure [paper] [code]
  86. [KDD 2021] Pre-training on Large-Scale Heterogeneous Graph [paper]
  87. [KDD 2021] MoCL: Contrastive Learning on Molecular Graphs with Multi-level Domain Knowledge [paper]
  88. [KDD 2021] Self-supervised Heterogeneous Graph Neural Network with Co-contrastive Learning [paper] [code]
  89. [WWW 2021] HDMI: High-order Deep Multiplex Infomax [paper] [code]
  90. πŸ”₯[WWW 2021] Graph Contrastive Learning with Adaptive Augmentation [paper] [code]
  91. [WWW 2021] SUGAR: Subgraph Neural Network with Reinforcement Pooling and Self-Supervised Mutual Information Mechanism [paper] [code]
  92. [WWW 2021] Multi-view Graph Contrastive Representation Learning for Drug-Drug Interaction Prediction [paper] [code]
  93. πŸ”₯[ICLR 2021] How to Find Your Friendly Neighborhood: Graph Attention Design with Self-Supervision [paper] [code]
  94. [WSDM 2021] Pre-Training Graph Neural Networks for Cold-Start Users and Items Representation [paper] [code]
  95. [KBS 2021] Multi-aspect self-supervised learning for heterogeneous information network [paper]
  96. [CVPR 2021] Zero-Shot Learning via Contrastive Learning on Dual Knowledge Graphs [paper]
  97. [ICBD 2021] Session-based Recommendation via Contrastive Learning on Heterogeneous Graph [paper]
  98. [ICONIP 2021] Concordant Contrastive Learning for Semi-supervised Node Classification on Graph [paper]
  99. [ICCSNT 2021] Graph Data Augmentation based on Adaptive Graph Convolution for Skeleton-based Action Recognition [paper]
  100. [IJCNN 2021] Node Embedding using Mutual Information and Self-Supervision based Bi-level Aggregation [paper]

Year 2020

  1. [Openreview 2020] Motif-Driven Contrastive Learning of Graph Representations [paper]
  2. [Openreview 2020] SLAPS: Self-Supervision Improves Structure Learning for Graph Neural Networks [paper]
  3. [Openreview 2020] TopoTER: Unsupervised Learning of Topology Transformation Equivariant Representations [paper]
  4. [Openreview 2020] Graph-Based Neural Network Models with Multiple Self-Supervised Auxiliary Tasks [paper]
  5. [Openreview 2020] Transfer Learning of Graph Neural Networks with Ego-graph Information Maximization [paper]
  6. [Arxiv 2020] COAD: Contrastive Pre-training with Adversarial Fine-tuning for Zero-shot Expert Linking [paper] [code]
  7. [Arxiv 2020] Distance-wise Graph Contrastive Learning [paper]
  8. πŸ”₯[Arxiv 2020] Self-supervised Learning on Graphs: Deep Insights and New Direction. [paper] [code]
  9. πŸ”₯[Arxiv 2020] Deep Graph Contrastive Representation Learning [paper]
  10. [Arxiv 2020] Self-supervised Training of Graph Convolutional Networks. [paper]
  11. [Arxiv 2020] Self-Supervised Graph Representation Learning via Global Context Prediction. [paper]
  12. πŸ”₯[Arxiv 2020] Graph-Bert: Only Attention is Needed for Learning Graph Representations. [paper] [code]
  13. πŸ”₯[NeurIPS 2020] Self-Supervised Graph Transformer on Large-Scale Molecular Data [paper]
  14. [NeurIPS 2020] Self-supervised Auxiliary Learning with Meta-paths for Heterogeneous Graphs [paper] [code]
  15. πŸ”₯[NeurIPS 2020] Graph Contrastive Learning with Augmentations [paper] [code]
  16. πŸ”₯[ICML 2020] When Does Self-Supervision Help Graph Convolutional Networks? [paper] [code]
  17. πŸ”₯[ICML 2020] Graph-based, Self-Supervised Program Repair from Diagnostic Feedback. [paper]
  18. πŸ”₯[ICML 2020] Contrastive Multi-View Representation Learning on Graphs. [paper] [code]
  19. [ICML 2020 Workshop] Self-supervised edge features for improved Graph Neural Network training. [paper]
  20. πŸ”₯[KDD 2020] GPT-GNN: Generative Pre-Training of Graph Neural Networks. [pdf] [code]
  21. πŸ”₯[KDD 2020] GCC: Graph Contrastive Coding for Graph Neural Network Pre-Training. [pdf] [code]
  22. πŸ”₯[ICLR 2020] InfoGraph: Unsupervised and Semi-supervised Graph-Level Representation Learning via Mutual Information Maximization. [paper] [code]
  23. πŸ”₯[ICLR 2020] Strategies for Pre-training Graph Neural Networks. [paper] [code]
  24. πŸ”₯[AAAI 2020] Multi-Stage Self-Supervised Learning for Graph Convolutional Networks on Graphs with Few Labels. [paper]
  25. [ICDM 2020] Sub-graph Contrast for Scalable Self-Supervised Graph Representation Learning [paper] [code]

Year 2019

  1. [KDD 2019 Workshop] SGR: Self-Supervised Spectral Graph Representation Learning. [paper]
  2. [ICLR 2019 Workshop] Can Graph Neural Networks Go "Online"? An Analysis of Pretraining and Inference. [paper]
  3. [ICLR 2019 workshop] Pre-Training Graph Neural Networks for Generic Structural Feature Extraction. [paper]
  4. [Arxiv 2019] Heterogeneous Deep Graph Infomax [paper] [code]
  5. πŸ”₯[ICLR 2019] Deep Graph Informax. [paper] [code]

Other related papers

(implicitly using self-supersvied learning or applying graph neural networks in other domains)

  1. [Arxiv 2020] Self-supervised Learning: Generative or Contrastive. [paper]
  2. [KDD 2020] Octet: Online Catalog Taxonomy Enrichment with Self-Supervision. [paper]
  3. [WWW 2020] Structural Deep Clustering Network. [paper] [code]
  4. [IJCAI 2019] Pre-training of Graph Augmented Transformers for Medication Recommendation. [paper] [code]
  5. [AAAI 2020] Unsupervised Attributed Multiplex Network Embedding [paper] [code]
  6. [WWW 2020] Graph representation learning via graphical mutual information maximization [paper]
  7. [NeurIPS 2017] Inductive Representation Learning on Large Graphs [paper] [code]
  8. [NeurIPS 2016 Workshop] Variational Graph Auto-Encoders [paper] [code]
  9. [WWW 2015] LINE: Large-scale Information Network Embedding [paper] [code]
  10. [KDD 2014] DeepWalk: Online Learning of Social Representations [paper] [code]

Acknowledgement

This page is contributed and maintained by Wei Jin(joe.weijin@gmail.com), Yuning You(yuning.you@tamu.edu) and Yingheng Wang(jakewyh@163.com).

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Papers about pretraining and self-supervised learning on Graph Neural Networks (GNN).

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