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圖學習學術速遞[2021/10/14]

Graph相關(圖學習|圖神經網路|圖優化等)(8篇)

[ 1 ] Object DGCNN: 3D Object Detection using Dynamic Graphs
Object DGCNN:基於動態圖的三維目標檢測
連結:
作者:Yue Wang,Justin Solomon
機構:Massachusetts Institute of Technology
備註:Accepted to NeurIPS 2021

[ 2 ] TAG: Toward Accurate Social Media Content Tagging with a Concept Graph


標籤:使用概念圖實現準確的社交媒體內容標籤
連結:
作者:Jiuding Yang,Weidong Guo,Bang Liu,Yakun Yu,Chaoyue Wang,Jinwen Luo,Linglong Kong,Di Niu,Zhen Wen
機構:University of Alberta, Edmonton, AB, Canada, RALI & Mila, Université de Montréal, Montréal, QC, Canada, Platform and Content Group, Tencent, Beijing, China

[ 3 ] Graph-Fraudster: Adversarial Attacks on Graph Neural Network Based Vertical Federated Learning
圖欺詐者:基於圖神經網路垂直聯合學習的對抗性攻擊
連結:
作者:Jinyin Chen,Guohan Huang,Shanqing Yu,Wenrong Jiang,Chen Cui

[ 4 ] Data-driven Leak Localization in Water Distribution Networks via Dictionary Learning and Graph-based Interpolation


基於字典學習和圖形插值的資料驅動供水管網洩漏定位
連結:
作者:Paul Irofti,Luis Romero-Ben,Florin Stoican,Vicenç Puig

[ 5 ] Incremental Community Detection in Distributed Dynamic Graph
分散式動態圖中的增量式社群發現
連結:
作者:Tariq Abughofa,Ahmed A. Harby,Haruna Isah,Farhana Zulkernine
機構:School of Computing, Kingston, ON, Canada, Ahmed A.Harby, Queen’s University Kingston
備註:BigDataService 2021 best paper award

[ 6 ] Scalable Consistency Training for Graph Neural Networks via Self-Ensemble Self-Distillation
基於自整合自蒸餾的圖神經網路可擴充套件一致性訓練
連結:
作者:Cole Hawkins,Vassilis N. Ioannidis,Soji Adeshina,George Karypis
機構:University of California, Santa Barbara, Amazon Web Services

[ 7 ] Molecular Graph Generation via Geometric Scattering
基於幾何散射的分子圖生成
連結:
作者:Dhananjay Bhaskar,Jackson D. Grady,Michael A. Perlmutter,Smita Krishnaswamy
機構:Department of Genetics, Yale University, New Haven, CT , USA, Department of Computer Science, Department of Mathematics, UCLA, Los Angeles, CA , USA

[ 8 ] Learning ground states of quantum Hamiltonians with graph networks
用圖網路學習量子哈密頓量的基態
連結:
作者:Dmitrii Kochkov,Tobias Pfaff,Alvaro Sanchez-Gonzalez,Peter Battaglia,Bryan K. Clark
機構:Google Research, DeepMind, University of Illinois at Urbana-Champaign
備註:19 pages, 9 figures

因上求緣,果上努力~~~~ 作者:希望每天漲粉,轉載請註明原文連結:https://www.cnblogs.com/BlairGrowing/p/15416589.html