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社区首页 >专栏 >ICML 2026 | LLM×Graph论文总结[1]【图基础模型,文本属性图,多模态属性图,图对齐,图提示学习,关系深度学习,知识图谱问答等】

ICML 2026 | LLM×Graph论文总结[1]【图基础模型,文本属性图,多模态属性图,图对齐,图提示学习,关系深度学习,知识图谱问答等】

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时空探索之旅
发布2026-05-20 15:09:44
发布2026-05-20 15:09:44
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文章被收录于专栏:时空探索之旅时空探索之旅

ICML 2026将在2026年7月6日—11日于韩国首尔(Seoul, South Korea)举行。本文总结了2026 ICML上有关LLM × Graph相关论文。如有疏漏,欢迎大家补充。

:笔者将分为上下2篇推文来总结,本文主要涉及针对图任务本身的的论文。

本文Graph的Topic:图基础模型,文本属性图,多模态属性图,图对齐,图提示学习,关系深度学习,知识图谱问答等。

1. Graph Alignment for Benchmarking Graph Neural Networks and Learning Positional Encodings2. GLAD: Bidirectional Structure-Attribute Alignment via Latent Graph Diffusion Models3. OpenMAG: A Comprehensive Benchmark for Multimodal-Attributed Graph4. Toward Effective Multimodal Graph Foundation Model: A Divide-and-Conquer Based Approach5. Structured Multi-modal Graph Disentanglement for Psychiatric Diagnosis6. MDGMIX: Boundary-Aware Subgraph Mixing for Multi-Domain Graph Pre-Training7. Is Fixing Schema Graphs Necessary? Full-Resolution Graph Structure Learning for Relational Deep Learning8. What Makes a Desired Graph for Relational Deep Learning?9. CCLRec: Consensus-driven Contrastive Learning for LLM-enhanced Graph Recommendation10. When LLMs Encounter Open-world Graph Learning: A Fresh View on Unlabeled Data Uncertainty11. Conformal Path Reasoning: Trustworthy Knowledge Graph Question Answering via Path-Level Calibration12. Graph is a Substrate Across Data Modalities13. GP2F: Cross-Domain Graph Prompting with Adaptive Fusion of Pre-trained Graph Neural Networks14. DTKG: Dual-Track Knowledge Graph-Verified Reasoning Framework for Multi-Hop QA15. Clustering as Reasoning: A -Means Interpretation of Chain-of-Thought Graph Learning16. Large Language Models as Topological Thinkers: A Benchmark on Graph Persistent Homology17. Enhancing LLMs for Graph Tasks via Graph-aware LoRA Generation18. GraphPFN: A Prior-Data Fitted Network for Graph Node-Level Tasks19. GFMate: Empowering Graph Foundation Models with Pre-training-agnostic Test-time Prompt Tuning20. Structure-Centric Graph Foundation Model via Geometric Bases21. A Graph Foundation Model with Cross-Modal Alignment and Modality-Aware Expert Fusion for Multi-Modal Graphs22. Learning Graph Foundation Models on Riemannian Graph-of-Graphs23. When Do Graph Foundation Models Transfer? A Data-Centric Theory24. Message Tuning Outshines Graph Prompt Tuning: A Prismatic Space Perspective25. Graph-GRPO: Training Graph Flow Models with Reinforcement Learning26. Position: Graph Condensation Needs a Reset—Move Beyond Full-dataset Training and Model-Dependence27. DiP-G: Discrete Prompting for Graph Neural Networks28. GRASP: Graph Reasoning via Agentic Solving and Probing of LLMs29. Are Common Substructures Transferable? Understanding Transferability in Graph Pretraining under Riemannian Geometry30. Bridging Structure and Semantics: Uncertainty-Modulated Dual-Path Diffusion for Robust Text-Attributed Graph Learning31. RSF-GLLM: Bridging the Semantic Gap in Multi-Hop Knowledge Graph QA via Recurrent Soft-Flow and Decoupled LLM Generation32. Backjump-on-Graph: Empowering LLMs with Reinforced Retrospective Exploration for Agentic KG Reasoning33. LLM-MatLogic: Executable Exchange Contracts for Knowledge-Graph Query Answering with Scoped Negation

点击文末阅读原文跳转笔者知乎链接(跳转论文链接更方便)

1 Graph Alignment for Benchmarking Graph Neural Networks and Learning Positional Encodings

链接https://icml.cc/virtual/2026/poster/63030

arXivhttps://arxiv.org/abs/2505.13087

作者:Adrien Lagesse ⋅ Marc Lelarge

关键词:benchmark,图对齐,位置编码

2 GLAD: Bidirectional Structure-Attribute Alignment via Latent Graph Diffusion Models

链接https://icml.cc/virtual/2026/poster/61411

作者:Jiankai Zuo ⋅ Yu Zhang ⋅ Yang Zhang ⋅ Zihao Yao ⋅ YAYING ZHANG

关键词:对齐,潜在图扩散模型

3 OpenMAG: A Comprehensive Benchmark for Multimodal-Attributed Graph

链接https://icml.cc/virtual/2026/poster/64650

arXivhttp://arxiv.org/abs/2602.05576v1

代码https://github.com/YUKI-N810/OpenMAG

作者:Chenxi Wan ⋅ Xunkai Li ⋅ Yilong Zuo ⋅ Haokun Deng ⋅ Sihan Li ⋅ Bowen Fan ⋅ Hongchao Qin ⋅ Rong-Hua Li ⋅ Guoren Wang

关键词:多模态属性图,benchmark

4 Toward Effective Multimodal Graph Foundation Model: A Divide-and-Conquer Based Approach

链接https://icml.cc/virtual/2026/poster/64358

arXivhttp://arxiv.org/abs/2602.04116v1

作者:Sicheng Liu ⋅ Xunkai Li ⋅ Daohan Su ⋅ Ru Zhang ⋅ Hongchao Qin ⋅ Rong-Hua Li ⋅ Guoren Wang

关键词:多模态图基础模型

5 Structured Multi-modal Graph Disentanglement for Psychiatric Diagnosis

链接https://icml.cc/virtual/2026/poster/62853

作者:Hongyu Shi ⋅ Kaizhong Zheng ⋅ WS Zhai ⋅ Shuai Jiang ⋅ Liangjun Chen ⋅ Badong Chen

关键词:多模态图解耦

6 MDGMIX: Boundary-Aware Subgraph Mixing for Multi-Domain Graph Pre-Training

链接https://icml.cc/virtual/2026/poster/65998

作者:Ziyu Zheng ⋅ Yaming Yang ⋅ Ziyu Guan ⋅ Wei Zhao ⋅ Xinyan Huang

关键词:多域图预训练,子图混合

7 Is Fixing Schema Graphs Necessary? Full-Resolution Graph Structure Learning for Relational Deep Learning

链接https://icml.cc/virtual/2026/poster/66492

作者:Yi Huang ⋅ Qingyun Sun ⋅ Jia Li ⋅ Xingcheng Fu ⋅ Jianxin Li

关键词:关系深度学习(RDL),图结构学习

8 What Makes a Desired Graph for Relational Deep Learning?

链接https://icml.cc/virtual/2026/poster/65162

作者:Yao Cheng ⋅ Siqiang Luo

关键词:关系深度学习(RDL),图结构学习

9 CCLRec: Consensus-driven Contrastive Learning for LLM-enhanced Graph Recommendation

链接https://icml.cc/virtual/2026/poster/65594

作者:Ting Guo ⋅ Dongyu Pei ⋅ Litiao Qiu ⋅ Xiaoying Liao ⋅ KE LIANG ⋅ Peng Song ⋅ Pinle Qin

关键词:基于图的推荐,对比学习,LLM增强

10 When LLMs Encounter Open-world Graph Learning: A Fresh View on Unlabeled Data Uncertainty

链接https://icml.cc/virtual/2026/poster/60613

arXivhttps://arxiv.org/abs/2505.13989

作者:Yanzhe Wen ⋅ Xunkai Li ⋅ Qi Zhang ⋅ Lei Zhu ⋅ Guang Zeng ⋅ Zhihan Zhang ⋅ Rong-Hua Li ⋅ Guoren Wang

关键词:开放世界图学习,未标记数据不确定性

11 Conformal Path Reasoning: Trustworthy Knowledge Graph Question Answering via Path-Level Calibration

链接https://icml.cc/virtual/2026/poster/61364

arXivhttp://arxiv.org/abs/2605.08077v1

作者:Shuhang Lin ⋅ Chuhao Zhou ⋅ Xiao Lin ⋅ Zihan Dong ⋅ Kuan Lu ⋅ Zhencan Peng ⋅ Jie Yin ⋅ Dimitris Metaxas

关键词:可信知识图谱问答,路径校准,共形路径推理

12 Graph is a Substrate Across Data Modalities

链接https://icml.cc/virtual/2026/poster/66111

arXivhttp://arxiv.org/abs/2601.22384v1

作者:Ziming Li ⋅ Xiao-Ming Wu ⋅ Zehong Wang ⋅ Jiazheng Li ⋅ Yijun Tian ⋅ Jinhe Bi ⋅ Yunpu Ma ⋅ Yanfang Ye ⋅ Chuxu Zhang

关键词:跨模态迁移

13 GP2F: Cross-Domain Graph Prompting with Adaptive Fusion of Pre-trained Graph Neural Networks

链接https://icml.cc/virtual/2026/poster/63086

arXivhttp://arxiv.org/abs/2602.11629v1

作者:Dongxiao He ⋅ Wenxuan Sun ⋅ Yongqi Huang ⋅ Jitao Zhao ⋅ Di Jin

关键词:跨域图提示学习,预训练GNN

14 DTKG: Dual-Track Knowledge Graph-Verified Reasoning Framework for Multi-Hop QA

链接https://icml.cc/virtual/2026/poster/66752

arXivhttp://arxiv.org/abs/2510.16302v1

作者:Changhao Wang ⋅ Yanfang Liu ⋅ Xinxin Fan ⋅ Lanzhi Zhou ⋅ Ao Tian ⋅ Yunfeng Lu

关键词:双轨知识图谱,多跳问答

15 Clustering as Reasoning: A -Means Interpretation of Chain-of-Thought Graph Learning

链接https://icml.cc/virtual/2026/poster/63141

作者:Xuanting Xie ⋅ Zhaochen Guo ⋅ Bingheng Li ⋅ Xingtong Yu ⋅ Zhifei Liao ⋅ zhao kang ⋅ Yuan Fang

关键词:思维链,图表示学习

16 Large Language Models as Topological Thinkers: A Benchmark on Graph Persistent Homology

链接https://icml.cc/virtual/2026/poster/63640

作者:Hao Li ⋅ Hao Wan ⋅ Yixue Huang ⋅ Yuzhou Chen ⋅ Yulia Gel ⋅ Hao Jiang

关键词:拓扑理论,‌持续同调

17 Enhancing LLMs for Graph Tasks via Graph-aware LoRA Generation

链接https://icml.cc/virtual/2026/poster/65661

作者:Junshu Sun ⋅ Wanxing Chang ⋅ Qingming Huang ⋅ Shuhui Wang

关键词:图感知的LoRa

18 GraphPFN: A Prior-Data Fitted Network for Graph Node-Level Tasks

链接https://icml.cc/virtual/2026/poster/66511

arXivhttps://arxiv.org/abs/2509.21489

作者:Dmitry Eremeev ⋅ Oleg Platonov ⋅ Gleb Bazhenov ⋅ Artem Babenko ⋅ Liudmila Prokhorenkova

关键词:图基础模型

19 GFMate: Empowering Graph Foundation Models with Pre-training-agnostic Test-time Prompt Tuning

链接https://icml.cc/virtual/2026/poster/65117

作者:Yan Jiang ⋅ Ruihong Qiu ⋅ Zi Huang

关键词:图基础模型,测试时提示调优

20 Structure-Centric Graph Foundation Model via Geometric Bases

链接https://icml.cc/virtual/2026/poster/62244

arXivhttp://arxiv.org/abs/2605.08689v1

代码https://github.com/Xd-He/SCGFM

作者:Xiaodong He ⋅ Haolan He ⋅ Ruiyi Fang ⋅ Ming Sun ⋅ zhao kang

关键词:图基础模型,结构为中心,几何基

21 A Graph Foundation Model with Cross-Modal Alignment and Modality-Aware Expert Fusion for Multi-Modal Graphs

链接https://icml.cc/virtual/2026/poster/62088

作者:Dongxiao He ⋅ AnKang Yang ⋅ Jitao Zhao ⋅ Di Jin

关键词:图基础模型,跨模态对齐,专家聚合

22 Learning Graph Foundation Models on Riemannian Graph-of-Graphs

链接https://icml.cc/virtual/2026/poster/63157

arXivhttp://arxiv.org/abs/2605.09993v1

代码https://github.com/USTC-DataDarknessLab/R-GFM

作者:Haokun Liu ⋅ Zezhong Ding ⋅ Xike Xie

关键词:图基础模型,黎曼图中图

23 When Do Graph Foundation Models Transfer? A Data-Centric Theory

链接https://icml.cc/virtual/2026/poster/65422

作者:Jiajun Zhu ⋅ Ying Chen ⋅ Peihao Wang ⋅ Yixuan He ⋅ Pan Li ⋅ Aditya Akella ⋅ Zhangyang “Atlas” Wang

关键词:图基础模型,数据中心

24 Message Tuning Outshines Graph Prompt Tuning: A Prismatic Space Perspective

链接https://icml.cc/virtual/2026/poster/65770

作者:Yancheng Chen ⋅ Dun Ma ⋅ Shuai Zhang ⋅ Yang Liu ⋅ Xixun Lin ⋅ Xiangyu Zhao ⋅ Wenguo Yang ⋅ Wei Chen ⋅ Chuan Zhou

关键词:图基础模型,提示调优

25 Graph-GRPO: Training Graph Flow Models with Reinforcement Learning

链接https://icml.cc/virtual/2026/poster/65744

arXivhttp://arxiv.org/abs/2603.10395v1

作者:Baoheng Zhu ⋅ Deyu Bo ⋅ Delvin Zhang ⋅ Xiao Wang

关键词:图流模型,GRPO

26 Position: Graph Condensation Needs a Reset—Move Beyond Full-dataset Training and Model-Dependence

链接https://icml.cc/virtual/2026/poster/67213

作者:Mridul Gupta ⋅ Samyak Jain ⋅ Vansh Ramani ⋅ HARIPRASAD KODAMANA ⋅ Sayan Ranu

关键词:图浓缩

27 DiP-G: Discrete Prompting for Graph Neural Networks

链接https://icml.cc/virtual/2026/poster/65482

作者:Yumeng Zhao ⋅ Huiying Hu ⋅ Steve Wen ⋅ Junjie Shen ⋅ Bei Hua

关键词:图提示学习,小样本

28 GRASP: Graph Reasoning via Agentic Solving and Probing of LLMs

链接https://icml.cc/virtual/2026/poster/61718

作者: Xiaojun Guo ⋅ Mingxue Tian ⋅ Chenheng Zhang ⋅ Xiaohan Wang ⋅ Jiajun Chai ⋅ Guojun Yin ⋅ Wei Lin ⋅ Yifei Wang ⋅ Yisen Wang

关键词:图推理,LLM

29 Are Common Substructures Transferable? Understanding Transferability in Graph Pretraining under Riemannian Geometry

链接https://icml.cc/virtual/2026/poster/66087

作者:Li Sun ⋅ Zhenhao Huang ⋅ Yiding Wang ⋅ Qin Chen ⋅ Pietro Lió ⋅ Philip Yu

关键词:图预训练,迁移

30 Bridging Structure and Semantics: Uncertainty-Modulated Dual-Path Diffusion for Robust Text-Attributed Graph Learning

链接https://icml.cc/virtual/2026/poster/65665

作者: Zhizhi Yu ⋅ Jiachen Liu ⋅ Qingyu Li ⋅ Dongxiao He ⋅ Di Jin

关键词:文本属性图,扩散模型,不确定性

31 RSF-GLLM: Bridging the Semantic Gap in Multi-Hop Knowledge Graph QA via Recurrent Soft-Flow and Decoupled LLM Generation

链接https://icml.cc/virtual/2026/poster/62235

作者:Sambaran Bandyopadhyay ⋅ Ananth Muppidi

关键词:知识图谱多跳问答

32 Backjump-on-Graph: Empowering LLMs with Reinforced Retrospective Exploration for Agentic KG Reasoning

链接https://icml.cc/virtual/2026/poster/61995

作者:Yunqi Zhang ⋅ Shiqi Yan ⋅ Zhenzhao Yuan ⋅ Wenrui Liang ⋅ Yangming Liu ⋅ Zhixiao Qi ⋅ Tianyi Zhang ⋅ Shijie Zhang ⋅ Wei-Qiang Zhang ⋅ Yongfeng Huang ⋅ Haixin Duan ⋅ Shuai Chen ⋅ Yubo Chen

关键词:知识图谱问答,Agentic

33 LLM-MatLogic: Executable Exchange Contracts for Knowledge-Graph Query Answering with Scoped Negation

链接https://icml.cc/virtual/2026/poster/64362

作者: Dezhuang Miao ⋅ Xiaoming Zhang ⋅ Bo Zhang ⋅ Yibin Du ⋅ Xiang Li ⋅ Ruilin Zeng ⋅ Yirui QI

关键词:知识图谱问答,LLM

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目录
  • 1 Graph Alignment for Benchmarking Graph Neural Networks and Learning Positional Encodings
  • 2 GLAD: Bidirectional Structure-Attribute Alignment via Latent Graph Diffusion Models
  • 3 OpenMAG: A Comprehensive Benchmark for Multimodal-Attributed Graph
  • 4 Toward Effective Multimodal Graph Foundation Model: A Divide-and-Conquer Based Approach
  • 5 Structured Multi-modal Graph Disentanglement for Psychiatric Diagnosis
  • 6 MDGMIX: Boundary-Aware Subgraph Mixing for Multi-Domain Graph Pre-Training
  • 7 Is Fixing Schema Graphs Necessary? Full-Resolution Graph Structure Learning for Relational Deep Learning
  • 8 What Makes a Desired Graph for Relational Deep Learning?
  • 9 CCLRec: Consensus-driven Contrastive Learning for LLM-enhanced Graph Recommendation
  • 10 When LLMs Encounter Open-world Graph Learning: A Fresh View on Unlabeled Data Uncertainty
  • 11 Conformal Path Reasoning: Trustworthy Knowledge Graph Question Answering via Path-Level Calibration
  • 12 Graph is a Substrate Across Data Modalities
  • 13 GP2F: Cross-Domain Graph Prompting with Adaptive Fusion of Pre-trained Graph Neural Networks
  • 14 DTKG: Dual-Track Knowledge Graph-Verified Reasoning Framework for Multi-Hop QA
  • 15 Clustering as Reasoning: A -Means Interpretation of Chain-of-Thought Graph Learning
  • 16 Large Language Models as Topological Thinkers: A Benchmark on Graph Persistent Homology
  • 17 Enhancing LLMs for Graph Tasks via Graph-aware LoRA Generation
  • 18 GraphPFN: A Prior-Data Fitted Network for Graph Node-Level Tasks
  • 19 GFMate: Empowering Graph Foundation Models with Pre-training-agnostic Test-time Prompt Tuning
  • 20 Structure-Centric Graph Foundation Model via Geometric Bases
  • 21 A Graph Foundation Model with Cross-Modal Alignment and Modality-Aware Expert Fusion for Multi-Modal Graphs
  • 22 Learning Graph Foundation Models on Riemannian Graph-of-Graphs
  • 23 When Do Graph Foundation Models Transfer? A Data-Centric Theory
  • 24 Message Tuning Outshines Graph Prompt Tuning: A Prismatic Space Perspective
  • 25 Graph-GRPO: Training Graph Flow Models with Reinforcement Learning
  • 26 Position: Graph Condensation Needs a Reset—Move Beyond Full-dataset Training and Model-Dependence
  • 27 DiP-G: Discrete Prompting for Graph Neural Networks
  • 28 GRASP: Graph Reasoning via Agentic Solving and Probing of LLMs
  • 29 Are Common Substructures Transferable? Understanding Transferability in Graph Pretraining under Riemannian Geometry
  • 30 Bridging Structure and Semantics: Uncertainty-Modulated Dual-Path Diffusion for Robust Text-Attributed Graph Learning
  • 31 RSF-GLLM: Bridging the Semantic Gap in Multi-Hop Knowledge Graph QA via Recurrent Soft-Flow and Decoupled LLM Generation
  • 32 Backjump-on-Graph: Empowering LLMs with Reinforced Retrospective Exploration for Agentic KG Reasoning
  • 33 LLM-MatLogic: Executable Exchange Contracts for Knowledge-Graph Query Answering with Scoped Negation
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