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Using Optimizate Method(including LLM, GNNs and other classical method) to solve some problem of complex graph.

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Learning-For-Graph

Using Optimizate Method(including LLM, GNNs and other classical method) to solve some problem of complex graph.

🔥 🔥 🔥 OOD问题(泛化-迁移-鲁棒)

  • Fan et al_2024_Generalizing Graph Neural Networks on Out-of-Distribution Graphs, TPAMI 2024
  • Guang et al_2024 - Graph Convolutional Networks With Adaptive Neighborhood Awareness, TPAMI 2024
  • Park et al_2024 - Forward Learning of Graph Neural Networks, ICLR 2024
  • MARIO: Model Agnostic Recipe for Improving OOD Generalization of Graph Contrastive Learning, WWW 2024
  • Spectral Invariant Learning for Dynamic Graphs under Distribution Shifts, NIPS 2023
  • Environment-Aware Dynamic Graph Learning for Out-of-Distribution Generalization, NIPS 2023
  • SPA: A Graph Spectral Alignment Perspective for Domain Adaptation, NIPS 2023
  • Learning Invariant Representations of Graph Neural Networks via Cluster Generalization, NIPS 2023
  • Graph-Structured Gaussian Processes for Transferable Graph Learning, NIPS 2023
  • WalkLM: A Uniform Language Model Fine-tuning Framework for Attributed Graph Embedding, NIPS 2023
  • Joint Learning of Label and Environment Causal Independence for Graph Out-of-Distribution Generalization, NIPS 2023
  • Universal Prompt Tuning for Graph Neural Networks, NIPS 2023
  • Structural Re-weighting Improves Graph Domain Adaptation, ICML 2023
  • Towards Understanding Generalization of Graph Neural Networks, ICML 2023
  • (also in 图数据label稀缺-不平衡-噪声)GNNEvaluator: Evaluating GNN Performance On Unseen Graphs Without Labels, NIPS 2023
  • (also in 图数据少样本学习)CoCo: A Coupled Contrastive Framework for Unsupervised Domain Adaptive Graph Classification, ICML 2023

graph生成-重建-粗化-识别

  • Yu 等 - 2024 - Recognizing Predictive Substructures With Subgraph, TPAMI 2024
  • A Graph is Worth K words Euclideanizing Graph using Pure Transformer, ICLR 2024
  • Autoregressive Diffusion Model for Graph Generation, ICML 2023
  • Graph Neural Networks can Recover the Hidden Features Solely from the Graph Structure, ICML 2023

🔥 🔥 同质性假设约束

  • Chen 等 - 2024 - POLYGCL GRAPH CONTRASTIVE LEARNING VIA LEARNABLE, ICLR 2024
  • Zheng 等 - 2024 - Node-Oriented Spectral Filtering for Graph Neural Network, ICLR 2024
  • Simple and Asymmetric Graph Contrastive Learning without Augmentations, NIPS 2023
  • Affinity-Aware Graph Networks, NIPS 2023
  • Demystifying Structural Disparity in Graph Neural Networks: Can One Size Fit All?, NIPS 2023
  • When Do Graph Neural Networks Help with Node Classification? Investigating the Impact of Homophily Principle on Node Distinguishability, NIPS 2023
  • Predicting Global Label Relationship Matrix for Graph Neural Networks under Heterophily, NIPS 2023
  • Finding the Missing-half: Graph Complementary Learning for Homophily-prone and Heterophily-prone Graphs, ICML 2023
  • (also in 过平衡问题)GREAD: Graph Neural Reaction-Diffusion Networks, ICML 2023

🔥 🔥 🔥 图数据label稀缺-不平衡-噪声-少(零)样本

  • Han 等 - 2024 - STRUCTURAL FAIRNESS-AWARE ACTIVE LEARNING FOR GRAPH NEURAL NETWORKS, ICLR 2024
  • Zheng 和 Wen - 2024 - ONLINE GNN EVALUATION UNDER TEST-TIME GRAPH DISTRIBUTION SHIFTS, ICLR 2024
  • Zhuo 等 - 2024 - PARTITIONING MESSAGE PASSING FOR GRAPH FRAUD DETECTION, ICLR 2024
  • Cost-effective Data Labelling for Graph Neural Networks, WWW 2024
  • Towards Expansive and Adaptive Hard Negative Mining: Graph Contrastive Learning via Subspace Preserving, WWW 2024
  • GNNEvaluator: Evaluating GNN Performance On Unseen Graphs Without Labels, NIPS 2023
  • Curriculum Learning for Graph Neural Networks: Which Edges Should We Learn First, NIPS 2023
  • Towards Label Position Bias in Graph Neural Networks, NIPS 2023
  • Neural Relation Graph: A Unified Framework for Identifying Label Noise and Outlier Data, NIPS 2023
  • No Change, No Gain: Empowering Graph Neural Networks with Expected Model Chang, NIPS 2023
  • Wang 等 - Deep Insights into Noisy Pseudo Labeling on Graph, NIPS 2023
  • Better with Less: A Data-Active Perspective on Pre-Training Graph Neural Networks, NIPS 2023
  • Leveraging Label Non-Uniformity for Node Classification in Graph Neural Networks, ICML 2023
  • When Sparsity Meets Contrastive Models: Less Graph Data Can Bring Better Class-Balanced Representations, ICML 2023
  • Disentangled Multiplex Graph Representation Learning, ICML 2023
  • Towards Understanding and Reducing Graph Structural Noise for GNNs, ICML 2023
  • CoCo: A Coupled Contrastive Framework for Unsupervised Domain Adaptive Graph Classification, ICML 2023

🔥 🔥 过平滑问题

  • Barbero 等 - 2024 - LOCALITY-AWARE GRAPH REWIRING IN GNNS, ICLR 2024
  • Graph Convolutional Kernel Machine versus Graph Convolutional Networks, NIPS 2023
  • Demystifying Oversmoothing in Attention-Based Graph Neural Networks, NIPS 2023
  • Improving Graph Neural Networks with Learnable Propagation Operators, ICML 2023
  • Towards Deep Attention in Graph Neural Networks: Problems and Remedies, ICML 2023
  • Path Neural Networks: Expressive and Accurate Graph Neural Networks, ICML 2023
  • Towards Better Graph Representation Learning with Parameterized Decomposition & Filtering, ICML 2023
  • GREAD: Graph Neural Reaction-Diffusion Networks, ICML 2023

🔥 🔥 异构图-超图-时空图等复杂图学习

  • (Heterogeneous)Liu 等 - 2024 - VBH-GNN: VARIATIONAL BAYESIAN HETEROGE- NEOUS GRAPH NEURAL NETWORKS FOR CROSS- SUBJECT EMOTION RECOGNITION, ICLR 2024
  • (Heterogeneous)Melton_Krishnan_2023_muxGNN: Multiplex Graph Neural Network for Heterogeneous Graphs, TPAMI 2023
  • (Heterogeneous)Zhou et al_2023_SlotGAT: Slot-based Message Passing for Heterogeneous Graphs, ICML 2023
  • (Hypergraph)Wang et al_2023_From Hypergraph Energy Functions to Hypergraph Neural Networks, ICML 2023
  • (Hypergraph)Wang 和 Kleinberg - 2024 - FROM GRAPHS TO HYPERGRAPHS: HYPERGRAPH PROJECTION AND ITS RECONSTRUCTION, ICLR 2024
  • (Hypergraph)Yan 等 - 2024 - HYPERGRAPH DYNAMIC SYSTEM, ICLR 2024
  • (Hypergraph)Duta 等 - Sheaf Hypergraph Networks, NIPS 2023
  • (Hypergraph)HYTREL: Hypergraph-enhanced Tabular Data Representation Learning, NIPS 2023
  • (Hypergraph)CAt-Walk: Inductive Hypergraph Learning via Set Walks, NIPS 2023
  • (Dynamic Graph)Towards Better Dynamic Graph Learning: New Architecture and Unified Library, NIPS 2023
  • (Dynamic Graph)Calibrate and Boost Logical Expressiveness of GNN Over Multi-Relational and Temporal Graphs, NIPS 2023
  • (Dynamic Graph)(also in OOD问题)Spectral Invariant Learning for Dynamic Graphs under Distribution Shifts, NIPS 2023
  • (Dynamic Graph)(also in OOD问题)Environment-Aware Dynamic Graph Learning for Out-of-Distribution Generalization, NIPS 2023
  • (Heterogeneous)(Dynamic Graph)GRAFENNE: Learning on Graphs with Heterogeneous and Dynamic Feature Sets, ICML 2023

🔥 🔥 🔥 图推理

  • Fatemi 等 - 2024 - TALK LIKE A GRAPH ENCODING GRAPHS FOR LARGE LANGUAGE MODEL, ICLR 2024
  • He 等 - 2024 - HARNESSING EXPLANATIONS: LLM-TO-LM INTER- PRETER FOR ENHANCED TEXT-ATTRIBUTED GRAPH REPRESENTATION LEARNING, ICLR 2024
  • Liu 等 - 2024 - ONE FOR ALL: TOWARDS TRAINING ONE GRAPH MODEL FOR ALL CLASSIFICATION TASKS, ICLR 2024
  • Luo 等 - 2024 - REASONING ON GRAPHS: FAITHFUL AND INTER- PRETABLE LARGE LANGUAGE MODEL REASONING, ICLR 2024
  • LD2: Scalable Heterophilous Graph Neural Network with Decoupled Embeddings, ICLR 2024

🔥 large-scale graph learning

  • Hyperbolic Graph Neural Networks at Scale: A Meta Learning Approach, NIPS 2023
  • Efficient Learning of Linear Graph Neural Networks via Node Subsampling, NIPS 2023
  • Graph Mixture of Experts: Learning on Large-Scale Graphs with Explicit Diversity Modeling, NIPS 2023
  • SGFormer: Simplifying and Empowering Transformers for Large-Graph Representations, NIPS 2023
  • Graph Neural Tangent Kernel: Convergence on Large Graphs, ICML 2023
  • GOAT: A Global Transformer on Large-scale Graphs, ICML 2023
  • LazyGNN: Large-Scale Graph Neural Networks via Lazy Propagation, ICML 2023

可解释性问题

  • Shin et_al_2024 - PAGE: Prototype-Based Model-Level Explanations for Graph Neural Networks, TPAMI 2024
  • Provable Training for Graph Contrastive Learning, NIPS 2023
  • D4Explainer: In-Distribution GNN Explanations via Discrete Denoising Diffusion, NIPS 2023

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Using Optimizate Method(including LLM, GNNs and other classical method) to solve some problem of complex graph.

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