Wasserstein Graph Distance based on L_1-Approximated Tree Edit Distance between Weisfeiler-Lehman Subtrees

07/09/2022
by   Zhongxi Fang, et al.
0

The Weisfeiler-Lehman (WL) test has been widely applied to graph kernels, metrics, and neural networks. However, it considers only the graph consistency, resulting in the weak descriptive power of structural information. Thus, it limits the performance improvement of applied methods. In addition, the similarity and distance between graphs defined by the WL test are in coarse measurements. To the best of our knowledge, this paper clarifies these facts for the first time and defines a metric we call the Wasserstein WL subtree (WWLS) distance. We introduce the WL subtree as the structural information in the neighborhood of nodes and assign it to each node. Then we define a new graph embedding space based on L_1-approximated tree edit distance (L_1-TED): the L_1 norm of the difference between node feature vectors on the space is the L_1-TED between these nodes. We further propose a fast algorithm for graph embedding. Finally, we use the Wasserstein distance to reflect the L_1-TED to the graph level. The WWLS can capture small changes in structure that are difficult with traditional metrics. We demonstrate its performance in several graph classification and metric validation experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/26/2023

Graph Edit Distance Learning via Different Attention

Recently, more and more research has focused on using Graph Neural Netwo...
research
02/05/2022

Weisfeiler-Lehman meets Gromov-Wasserstein

The Weisfeiler-Lehman (WL) test is a classical procedure for graph isomo...
research
06/04/2019

Wasserstein Weisfeiler-Lehman Graph Kernels

Graph kernels are an instance of the class of R-Convolution kernels, whi...
research
02/01/2022

Gromov-Wasserstein Discrepancy with Local Differential Privacy for Distributed Structural Graphs

Learning the similarity between structured data, especially the graphs, ...
research
11/30/2020

Combinatorial Learning of Graph Edit Distance via Dynamic Embedding

Graph Edit Distance (GED) is a popular similarity measurement for pairwi...
research
06/22/2020

Gromov-Wasserstein Distance based Object Matching: Asymptotic Inference

In this paper, we aim to provide a statistical theory for object matchin...
research
05/31/2018

On representation power of neural network-based graph embedding and beyond

The representation power of similarity functions used in neural network-...

Please sign up or login with your details

Forgot password? Click here to reset