Convolutional layers within graph neural networks operate by aggregating information about local neighbourhood structures; one common way to encode such substructures is through random walks. The distribution of these random walks evolves according to a diffusion equation defined using the graph Laplacian. We extend this approach by leveraging classic mathematical results about hypo-elliptic diffusions. This results in a novel tensor-valued graph operator, which we call the hypo-elliptic graph Laplacian. We provide theoretical guarantees and efficient low-rank approximation algorithms. In particular, this gives a structured approach to capture long-range dependencies on graphs that is robust to pooling. Besides the attractive theoretical pr...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
International audienceOptimal Transport (OT) for structured data has received much attention in the ...
High-order Graph Neural Networks (HO-GNNs) have been developed to infer consistent latent spaces in ...
Convolutional layers within graph neural networks operate by aggregating information about local nei...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
Information analysis of data often boils down to properly identifying their hidden structure. In man...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Cellular sheaves equip graphs with a "geometrical" structure by assigning vector spaces and linear m...
In this paper we focus on comparing machine learning approaches for quantum graphs, which are metric...
How is the shape of a graph captured by the way heat diffuses between its nodes? The Laplacian Expon...
The recent emergence of large networks, mainly due to the rise of online social networks, brought ou...
Big Data calls for techniques to gain insight into the tremendous amount of data generated. This The...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
Abstract. This work provides the first detailed investigation of the dis-turbed diffusion scheme FOS...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
International audienceOptimal Transport (OT) for structured data has received much attention in the ...
High-order Graph Neural Networks (HO-GNNs) have been developed to infer consistent latent spaces in ...
Convolutional layers within graph neural networks operate by aggregating information about local nei...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
Information analysis of data often boils down to properly identifying their hidden structure. In man...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Cellular sheaves equip graphs with a "geometrical" structure by assigning vector spaces and linear m...
In this paper we focus on comparing machine learning approaches for quantum graphs, which are metric...
How is the shape of a graph captured by the way heat diffuses between its nodes? The Laplacian Expon...
The recent emergence of large networks, mainly due to the rise of online social networks, brought ou...
Big Data calls for techniques to gain insight into the tremendous amount of data generated. This The...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
Abstract. This work provides the first detailed investigation of the dis-turbed diffusion scheme FOS...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
International audienceOptimal Transport (OT) for structured data has received much attention in the ...
High-order Graph Neural Networks (HO-GNNs) have been developed to infer consistent latent spaces in ...