A survey on graph kernels
Graph kernels have become an established and widely-used technique for solving
classification tasks on graphs. This survey gives a comprehensive overview of techniques …
classification tasks on graphs. This survey gives a comprehensive overview of techniques …
Random walk graph neural networks
In recent years, graph neural networks (GNNs) have become the de facto tool for performing
machine learning tasks on graphs. Most GNNs belong to the family of message passing …
machine learning tasks on graphs. Most GNNs belong to the family of message passing …
Matching node embeddings for graph similarity
Graph kernels have emerged as a powerful tool for graph comparison. Most existing graph
kernels focus on local properties of graphs and ignore global structure. In this paper, we …
kernels focus on local properties of graphs and ignore global structure. In this paper, we …
Lovász principle for unsupervised graph representation learning
This paper focuses on graph-level representation learning that aims to represent graphs as
vectors that can be directly utilized in downstream tasks such as graph classification. We …
vectors that can be directly utilized in downstream tasks such as graph classification. We …
Graph kernels: A survey
Graph kernels have attracted a lot of attention during the last decade, and have evolved into
a rapidly develo** branch of learning on structured data. During the past 20 years, the …
a rapidly develo** branch of learning on structured data. During the past 20 years, the …
Glocalized weisfeiler-lehman graph kernels: Global-local feature maps of graphs
Most state-of-the-art graph kernels only take local graph properties into account, ie, the
kernel is computed with regard to properties of the neighborhood of vertices or other small …
kernel is computed with regard to properties of the neighborhood of vertices or other small …
A large-scale database for graph representation learning
With the rapid emergence of graph representation learning, the construction of new large-
scale datasets is necessary to distinguish model capabilities and accurately assess the …
scale datasets is necessary to distinguish model capabilities and accurately assess the …
Sub-network kernels for measuring similarity of brain connectivity networks in disease diagnosis
As a simple representation of interactions among distributed brain regions, brain networks
have been widely applied to automated diagnosis of brain diseases, such as Alzheimer's …
have been widely applied to automated diagnosis of brain diseases, such as Alzheimer's …
[PDF][PDF] A Degeneracy Framework for Graph Similarity.
The problem of accurately measuring the similarity between graphs is at the core of many
applications in a variety of disciplines. Most existing methods for graph similarity focus either …
applications in a variety of disciplines. Most existing methods for graph similarity focus either …
A survey of graph comparison methods with applications to nondeterminism in high-performance computing
The convergence of extremely high levels of hardware concurrency and the effective overlap
of computation and communication in asynchronous executions has resulted in increasing …
of computation and communication in asynchronous executions has resulted in increasing …