A comprehensive survey on deep graph representation learning
Graph representation learning aims to effectively encode high-dimensional sparse graph-
structured data into low-dimensional dense vectors, which is a fundamental task that has …
structured data into low-dimensional dense vectors, which is a fundamental task that has …
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 …
Graph neural networks: foundation, frontiers and applications
The field of graph neural networks (GNNs) has seen rapid and incredible strides over the
recent years. Graph neural networks, also known as deep learning on graphs, graph …
recent years. Graph neural networks, also known as deep learning on graphs, graph …
Identity-aware graph neural networks
Abstract Message passing Graph Neural Networks (GNNs) provide a powerful modeling
framework for relational data. However, the expressive power of existing GNNs is upper …
framework for relational data. However, the expressive power of existing GNNs is upper …
Substructure aware graph neural networks
Despite the great achievements of Graph Neural Networks (GNNs) in graph learning,
conventional GNNs struggle to break through the upper limit of the expressiveness of first …
conventional GNNs struggle to break through the upper limit of the expressiveness of first …
A new perspective on" how graph neural networks go beyond weisfeiler-lehman?"
A Wijesinghe, Q Wang - International Conference on Learning …, 2022 - openreview.net
We propose a new perspective on designing powerful Graph Neural Networks (GNNs). In a
nutshell, this enables a general solution to inject structural properties of graphs into a …
nutshell, this enables a general solution to inject structural properties of graphs into a …
Graph neural tangent kernel: Fusing graph neural networks with graph kernels
While graph kernels (GKs) are easy to train and enjoy provable theoretical guarantees, their
practical performances are limited by their expressive power, as the kernel function often …
practical performances are limited by their expressive power, as the kernel function often …
Facilitating graph neural networks with random walk on simplicial complexes
Node-level random walk has been widely used to improve Graph Neural Networks.
However, there is limited attention to random walk on edge and, more generally, on $ k …
However, there is limited attention to random walk on edge and, more generally, on $ k …
Sign and basis invariant networks for spectral graph representation learning
We introduce SignNet and BasisNet--new neural architectures that are invariant to two key
symmetries displayed by eigenvectors:(i) sign flips, since if $ v $ is an eigenvector then so is …
symmetries displayed by eigenvectors:(i) sign flips, since if $ v $ is an eigenvector then so is …
Random walk graph neural networks
G Nikolentzos, M Vazirgiannis - Advances in Neural …, 2020 - proceedings.neurips.cc
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 …