Graphs can model complicated interactions between entities, which naturally emerge in many important applications. These applications can often be cast into standard graph learning tasks, in which a crucial step is to learn low-dimensional graph representations. Graph neural networks (GNNs) are currently the most popular model in graph embedding approaches. However, standard GNNs in the neighborhood aggregation paradigm suffer from limited discriminative power in distinguishing \emph{high-order} graph structures as opposed to \emph{low-order} structures. To capture high-order structures, researchers have resorted to motifs and developed motif-based GNNs. However, existing motif-based GNNs still often suffer from less discriminative power on...
Motifs are regarded as network blocks because motifs can be used to present fundamental patterns in ...
International audienceReal data collected from different applications that have additional topologic...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...
Graph neural networks (GNNs) have been the dominant approaches for graph representation learning. Ho...
We consider the explanation problem of Graph Neural Networks (GNNs). Most existing GNN explanation m...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Link prediction is one of the central problems in graph mining. However, recent studies highlight th...
We consider feature representation learning problem of molecular graphs. Graph Neural Networks have ...
Graphs are commonly used to represent pairwise interactions between different entities in networks. ...
Graph classification is critically important to many real-world applications that are associated wit...
Graphs are important data structures that can be found in a wide variety of real-world scenarios. It...
Graph neural networks take node features and graph structure as input to build representations for n...
Graph Neural Networks (GNNs) have become excessively popular and prominent deep learning techniques ...
In the last decades, learning over graph data has become one of the most challenging tasks in deep l...
Most graph neural networks (GNNs) rely on the message passing paradigm to propagate node features an...
Motifs are regarded as network blocks because motifs can be used to present fundamental patterns in ...
International audienceReal data collected from different applications that have additional topologic...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...
Graph neural networks (GNNs) have been the dominant approaches for graph representation learning. Ho...
We consider the explanation problem of Graph Neural Networks (GNNs). Most existing GNN explanation m...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Link prediction is one of the central problems in graph mining. However, recent studies highlight th...
We consider feature representation learning problem of molecular graphs. Graph Neural Networks have ...
Graphs are commonly used to represent pairwise interactions between different entities in networks. ...
Graph classification is critically important to many real-world applications that are associated wit...
Graphs are important data structures that can be found in a wide variety of real-world scenarios. It...
Graph neural networks take node features and graph structure as input to build representations for n...
Graph Neural Networks (GNNs) have become excessively popular and prominent deep learning techniques ...
In the last decades, learning over graph data has become one of the most challenging tasks in deep l...
Most graph neural networks (GNNs) rely on the message passing paradigm to propagate node features an...
Motifs are regarded as network blocks because motifs can be used to present fundamental patterns in ...
International audienceReal data collected from different applications that have additional topologic...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...