无码av一区二区三区无码,在线观看老湿视频福利,日韩经典三级片,成 人色 网 站 欧美大片在线观看

歡迎光臨散文網(wǎng) 會(huì)員登陸 & 注冊(cè)

42篇ICLR2023圖神經(jīng)網(wǎng)絡(luò)論文

2022-10-11 17:10 作者:深度之眼官方賬號(hào)  | 我要投稿

來(lái)源:轉(zhuǎn)載自圖神經(jīng)網(wǎng)絡(luò)與推薦系統(tǒng)

作者:北冥有魚?編輯:學(xué)姐

收藏一下ICLR 2023圖神經(jīng)網(wǎng)絡(luò)相關(guān)的文章,存下來(lái)慢慢看,后面會(huì)慢慢更新一些文章總結(jié)。

關(guān)注【學(xué)姐帶你玩AI】公眾號(hào)后臺(tái)回復(fù)“ICLR 2023 GNN”領(lǐng)取42篇論文PDF(下載好的)



  1. Graph Attention Retrospective??Kimon Fountoulakis (Waterloo)

  2. Limitless Stability for Graph Convolutional Networks

  3. The Graph Learning Attention Mechanism: Learnable Sparsification Without Heuristics

  4. Network Controllability Perspectives on Graph Representation

  5. Graph Contrastive Learning Under Heterophily: Utilizing Graph Filters to Generate Graph Views

  6. Spectral Augmentation for Self-Supervised Learning on Graphs

  7. Simple and Deep Graph Attention Networks

  8. Agent-based Graph Neural Networks?Karolis Martinkus (ETH), Pál András Papp (ETH), Benedikt Schesch (ETH) Roger Wattenhofer (ETH)

  9. A Class-Aware Representation Refinement Framework for Graph Classification?Jiaxing Xu, Jinjie Ni, Sophi Shilpa Gururajapathy & Yiping Ke (NTU)

  10. ReD-GCN: Revisit the Depth of Graph Convolutional Network

  11. Revisiting Graph Adversarial Attack and Defense From a Data Distribution Perspective

  12. Simple Spectral Graph Convolution from an Optimization Perspective

  13. GraphEditor: An Efficient Graph Representation Learning and Unlearning Approach?Weilin Cong, Mehrdad Mahdavi (PSU)

  14. Specformer: Spectral Graph Neural Networks Meet Transformers

  15. DiGress: Discrete Denoising diffusion for graph generation Clement Vignac, Igor Krawczuk, Antoine Siraudin, Bohan Wang, Volkan Cevher, Pascal Frossard (EPFL)

  16. ASGNN: Graph Neural Networks with Adaptive Structure

  17. DeepGRAND: Deep Graph Neural Diffusion

  18. Empowering Graph Representation Learning with Test-Time Graph Transformation

  19. The Impact of Neighborhood Distribution in Graph Convolutional Networks

  20. NAGphormer: A Tokenized Graph Transformer for Node Classification in Large Graphs

  21. Wide Graph Neural Network

  22. How Powerful is Implicit Denoising in Graph Neural Networks?Songtao Liu (PSU), Rex Ying (Yale), Hanze Dong (HKUST), Lu Lin (PSU), Jinghui Chen (PSU), Dinghao Wu (PSU)

  23. Learnable Graph Convolutional Attention Networks

  24. Revisiting Robustness in Graph Machine Learning

  25. Graph Neural Bandits?Parnian Kassraie (ETH), Andreas Krause (ETH), Ilija Bogunovic (UCL)

  26. Learning Graph Neural Network Topologies

  27. Affinity-Aware Graph Networks?Ameya Velingker (Google Research), Ali Kemal Sinop (Google Research), Ira Ktena (DeepMind), Petar Velickovic (DeepMind), Sreenivas Gollapudi (Google Research)

  28. Diffusing Graph Attention

  29. Relational Curriculum Learning for Graph Neural Networks

  30. Stable, Efficient, and Flexible Monotone Operator Implicit Graph Neural Networks

  31. Distributional Signals for Node Classification in Graph Neural Networks

  32. Rewiring with Positional Encodings for GNNs?Rickard Bruel-Gabrielsson (MIT), Mikhail Yurochkin (MIT-IBM) Justin Solomon (MIT)

  33. Learning MLPs on Graphs: A Unified View of Effectiveness, Robustness, and Efficiency

  34. Fair Graph Message Passing with Transparency Zhimeng Jiang (TAMU), Xiaotian Han (TAMU), Chao Fan (TAMU), Zirui Liu (Rice), Na Zou (TAMU), Ali Mostafavi (TAMU), Xia Hu (Rice)

  35. Sign and Basis Invariant Networks for Spectral Graph Representation Learning Derek Lim (MIT), Joshua Robinson (MIT), Lingxiao Zhao (CMU), Tess Smidt (MIT), Suvrit Sra (MIT) Haggai Maron (NVIDIA Research) Stefanie Jegelka (MIT)

  36. Graph Neural Networks Are More Powerful Than We Think?Charilaos I. Kanatsoulis, Alejandro Ribeiro (UPenn)

  37. Robust Graph Representation Learning via Predictive Coding

  38. Universal Graph Neural Networks without Message Passing

  39. Fair Attribute Completion on Graph with Missing Attributes

  40. Asynchronous Message Passing: A New Framework for Learning in GraphsLukas Faber, Roger Wattenhofer (ETH)

  41. Graph Neural Networks as Gradient Flows: understanding graph convolutions via energyFrancesco Di Giovanni, James Rowbottom, Benjamin P. Chamberlain, Thomas Markovich, Michael M. Bronstein (Twitter)

  42. Rethinking the Expressive Power of GNNs via Graph Biconnectivity


42篇ICLR2023圖神經(jīng)網(wǎng)絡(luò)論文的評(píng)論 (共 條)

分享到微博請(qǐng)遵守國(guó)家法律
宣武区| 永兴县| 勃利县| 友谊县| 西丰县| 镇坪县| 大竹县| 会泽县| 达州市| 香格里拉县| 香河县| 阿巴嘎旗| 广河县| 綦江县| 南华县| 常山县| 绥德县| 新田县| 和龙市| 宾川县| 平顶山市| 夏河县| 乐陵市| 迭部县| 潮州市| 同德县| 雅江县| 思茅市| 南部县| 监利县| 通许县| 闸北区| 沧州市| 夏河县| 托克逊县| 易门县| 昌邑市| 涿州市| 弥勒县| 濮阳市| 阜阳市|