This article proposes the augmentation of the adjacency model of networks for graph signal processing. It is assumed that no information about the network is available, apart from the initial adjacency matrix. In the proposed model, additional edges are created according to a Markov relation imposed between nodes. This information is incorporated into the extended-adjacency matrix as a function of the diffusion distance between nodes. The diffusion distance measures similarities between nodes at a certain diffusion scale or time, and is a metric adopted from diffusion maps. Similarly, the proposed extended-adjacency matrix depends on the diffusion scale, which enables the definition of a scale-dependent graph Fourier transform. We conduct t...
Nowadays graphs became of significant importance given their use to describe complex system dynamics...
Large-scale networks are becoming more prevalent, with applications in healthcare systems, financial...
International audienceIn this paper, we present a novel generalization of the graph Fourier transfor...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
peer reviewedThis work proposes a graph model for networks where node collaborations can be describe...
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...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
Thesis (Ph. D.)--University of Rochester. Department of Electrical and Computer Engineering, 2020.Ne...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
International audienceMany tools from the field of graph signal processing exploit knowledge of the ...
The legacy of Joseph Fourier in science is vast, especially thanks to the essential tool that the Fo...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
We have recently seen a surge of research focusing on the processing of graph data. The emerging fie...
We propose a novel difference metric, called the graph diffusion dis-tance (GDD), for quantifying th...
Nowadays graphs became of significant importance given their use to describe complex system dynamics...
Large-scale networks are becoming more prevalent, with applications in healthcare systems, financial...
International audienceIn this paper, we present a novel generalization of the graph Fourier transfor...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
peer reviewedThis work proposes a graph model for networks where node collaborations can be describe...
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...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
Thesis (Ph. D.)--University of Rochester. Department of Electrical and Computer Engineering, 2020.Ne...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
International audienceMany tools from the field of graph signal processing exploit knowledge of the ...
The legacy of Joseph Fourier in science is vast, especially thanks to the essential tool that the Fo...
pre-printWe propose a novel difference metric, called the graph diffusion distance (GDD), for quanti...
We have recently seen a surge of research focusing on the processing of graph data. The emerging fie...
We propose a novel difference metric, called the graph diffusion dis-tance (GDD), for quantifying th...
Nowadays graphs became of significant importance given their use to describe complex system dynamics...
Large-scale networks are becoming more prevalent, with applications in healthcare systems, financial...
International audienceIn this paper, we present a novel generalization of the graph Fourier transfor...