With the increase in data acquisition and storage capabilities, developing efficient methods for processing graph-structured data has become a crucial issue in data science. We introduce and study new methods based on heat diffusion to compare graphs. The novelty of our approach essentially lies in the introduction of the concept of distance processes, where we consider the family of all distances computed over a continuous range of diffusion times for a given pair of graphs. This allows us to develop a multi-scale analysis of graphs. Moreover, by representing graphs via tools borrowed from topological data analysis, we are able to compare graphs of different sizes or unaligned graphs. The statistical properties of these processes are studi...
Abstract—We introduce the diffusion and superposition dis-tances as two metrics to compare signals s...
Abstract. This work provides the first detailed investigation of the dis-turbed diffusion scheme FOS...
International audienceThe use of the heat kernel on graphs has recently given rise to a family of so...
With the increase in data acquisition and storage capabilities, developing efficient methods for pro...
We propose two multiscale comparisons of graphs using heat diffusion, allowing to compare graphs wit...
18 pages, 6 figuresInternational audienceWe propose two multiscale comparisons of graphs using heat ...
How is the shape of a graph captured by the way heat diffuses between its nodes? The Laplacian Expon...
This thesis is about the definition and study of the Diffusion-Wasserstein distances between attribu...
In this thesis, we study data analysis algorithms using random walks on neighborhood graphs, or rand...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
We propose a novel difference metric, called the graph diffusion dis-tance (GDD), for quantifying th...
Dans cette thèse, on s'intéresse à des algorithmes d'analyse de données utilisant des marches aléato...
Abstract—We introduce the diffusion and superposition dis-tances as two metrics to compare signals s...
Abstract. This work provides the first detailed investigation of the dis-turbed diffusion scheme FOS...
International audienceThe use of the heat kernel on graphs has recently given rise to a family of so...
With the increase in data acquisition and storage capabilities, developing efficient methods for pro...
We propose two multiscale comparisons of graphs using heat diffusion, allowing to compare graphs wit...
18 pages, 6 figuresInternational audienceWe propose two multiscale comparisons of graphs using heat ...
How is the shape of a graph captured by the way heat diffuses between its nodes? The Laplacian Expon...
This thesis is about the definition and study of the Diffusion-Wasserstein distances between attribu...
In this thesis, we study data analysis algorithms using random walks on neighborhood graphs, or rand...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
We propose a novel difference metric, called the graph diffusion dis-tance (GDD), for quantifying th...
Dans cette thèse, on s'intéresse à des algorithmes d'analyse de données utilisant des marches aléato...
Abstract—We introduce the diffusion and superposition dis-tances as two metrics to compare signals s...
Abstract. This work provides the first detailed investigation of the dis-turbed diffusion scheme FOS...
International audienceThe use of the heat kernel on graphs has recently given rise to a family of so...