How can we augment a dynamic graph for improving the performance of dynamic graph neural networks? Graph augmentation has been widely utilized to boost the learning performance of GNN-based models. However, most existing approaches only enhance spatial structure within an input static graph by transforming the graph, and do not consider dynamics caused by time such as temporal locality, i.e., recent edges are more influential than earlier ones, which remains challenging for dynamic graph augmentation. In this work, we propose TiaRa (Time-aware Random Walk Diffusion), a novel diffusion-based method for augmenting a dynamic graph represented as a discrete-time sequence of graph snapshots. For this purpose, we first design a time-aware random ...
We consider the problem of inferring the hidden structure of high-dimensional dynamic systems from t...
Temporal domain generalization is a promising yet extremely challenging area where the goal is to le...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
How can we augment a dynamic graph for improving the performance of dynamic graph neural networks? G...
Continuous-time dynamic graphs naturally abstract many real-world systems, such as social and transa...
Representation learning in dynamic graphs is a challenging problem because the topology of graph and...
International audienceComplex networks may be studied in various ways, e.g., by analyzing the evolut...
The graph neural network has received significant attention in recent years because of its unique ro...
Temporal graphs abstractly model real-life inherently dynamic networks. Given a graph G, a temporal ...
Machine learning on graph data has gained significant interest because of its applicability to vario...
Recent years have seen a surge in research on dynamic graph representation learning, which aims to m...
Most works on graph signal processing assume static graph signals, which is a limitation even in com...
We establish and generalise several bounds for various random walk quantities including the mixing t...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
International audienceMost works on graph signal processing assume static graph signals, which is a ...
We consider the problem of inferring the hidden structure of high-dimensional dynamic systems from t...
Temporal domain generalization is a promising yet extremely challenging area where the goal is to le...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
How can we augment a dynamic graph for improving the performance of dynamic graph neural networks? G...
Continuous-time dynamic graphs naturally abstract many real-world systems, such as social and transa...
Representation learning in dynamic graphs is a challenging problem because the topology of graph and...
International audienceComplex networks may be studied in various ways, e.g., by analyzing the evolut...
The graph neural network has received significant attention in recent years because of its unique ro...
Temporal graphs abstractly model real-life inherently dynamic networks. Given a graph G, a temporal ...
Machine learning on graph data has gained significant interest because of its applicability to vario...
Recent years have seen a surge in research on dynamic graph representation learning, which aims to m...
Most works on graph signal processing assume static graph signals, which is a limitation even in com...
We establish and generalise several bounds for various random walk quantities including the mixing t...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
International audienceMost works on graph signal processing assume static graph signals, which is a ...
We consider the problem of inferring the hidden structure of high-dimensional dynamic systems from t...
Temporal domain generalization is a promising yet extremely challenging area where the goal is to le...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...