Graph Diffusion Wasserstein Distances

被引:0
|
作者
Barbe, Amelie [1 ,2 ,3 ]
Sebban, Marc [3 ]
Goncalves, Paulo [1 ]
Borgnat, Pierre [2 ]
Gribonval, Remi [1 ]
机构
[1] Univ Lyon, ENS Lyon, CNRS, INRIA,LIP UMR 5668,UCB Lyon 1, F-69342 Lyon, France
[2] Univ Lyon, ENS Lyon, UCB Lyon 1, CNRS,Lab Phys, F-69342 Lyon, France
[3] Univ Lyon, UJM St Etienne, CNRS, Inst Opt,Grad Sch,Lab Hubert Curien UMR 5516, F-42023 St Etienne, France
关键词
Optimal Transport; Graph Laplacian; Heat diffusion;
D O I
10.1007/978-3-030-67661-2_34
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Optimal Transport (OT) for structured data has received much attention in the machine learning community, especially for addressing graph classification or graph transfer learning tasks. In this paper, we present the Diffusion Wasserstein (DW) distance, as a generalization of the standard Wasserstein distance to undirected and connected graphs where nodes are described by feature vectors. DW is based on the Laplacian exponential kernel and benefits from the heat diffusion to catch both structural and feature information from the graphs. We further derive lower/upper bounds on DW and show that it can be directly plugged into the Fused GromovWasserstein (FGW) distance that has been recently proposed, leading - for free - to a DifFused Gromov Wasserstein distance (DFGW) that allows a significant performance boost when solving graph domain adaptation tasks.
引用
收藏
页码:577 / 592
页数:16
相关论文
共 50 条
  • [31] A New Perspective on Wasserstein Distances for Kinetic Problems
    Iacobelli, Mikaela
    ARCHIVE FOR RATIONAL MECHANICS AND ANALYSIS, 2022, 244 (01) : 27 - 50
  • [32] On Efficient Multilevel Clustering via Wasserstein Distances
    Viet Huynh
    Nhat Ho
    Nhan Dam
    XuanLong Nguyen
    Yurochkin, Mikhail
    Hung Bui
    Dinh Phung
    JOURNAL OF MACHINE LEARNING RESEARCH, 2021, 22
  • [33] Universality of persistence diagrams and the bottleneck and Wasserstein distances
    Bubenik P.
    Elchesen A.
    Computational Geometry: Theory and Applications, 2022, 105-106
  • [34] Histogram based segmentation using wasserstein distances
    Chan, Tony
    Esedoglu, Selirn
    Ni, Kangyu
    SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION, PROCEEDINGS, 2007, 4485 : 697 - +
  • [35] Deep Wasserstein Graph Discriminant Learning for Graph Classification
    Zhang, Tong
    Wang, Yun
    Cui, Zhen
    Zhou, Chuanwei
    Cui, Baoliang
    Huang, Haikuan
    Yang, Jian
    THIRTY-FIFTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, THIRTY-THIRD CONFERENCE ON INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND THE ELEVENTH SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2021, 35 : 10914 - 10922
  • [36] Intrinsic graph distances compared to euclidean distances for correspondent graph embedding
    Ivanciuc, O
    Ivanciuc, T
    Klein, DJ
    MATCH-COMMUNICATIONS IN MATHEMATICAL AND IN COMPUTER CHEMISTRY, 2001, (44) : 251 - 278
  • [37] Statistical, Robustness, and Computational Guarantees for Sliced Wasserstein Distances
    Nietert, Sloan
    Sadhu, Ritwik
    Goldfeld, Ziv
    Kato, Kengo
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35, NEURIPS 2022, 2022,
  • [38] Ergodicity of regime-switching diffusions in Wasserstein distances
    Shao, Jinghai
    STOCHASTIC PROCESSES AND THEIR APPLICATIONS, 2015, 125 (02) : 739 - 758
  • [39] Gromov-Wasserstein distances between Gaussian distributions
    Delon, Julie
    Desolneux, Agnes
    Salmona, Antoine
    JOURNAL OF APPLIED PROBABILITY, 2022, 59 (04) : 1178 - 1198
  • [40] Wasserstein Distances for Estimating Parameters in Stochastic Reaction Networks
    Ocal, Kaan
    Grima, Ramon
    Sanguinetti, Guido
    COMPUTATIONAL METHODS IN SYSTEMS BIOLOGY (CMSB 2019), 2019, 11773 : 347 - 351