Abstract The general method of graph coarsening or graph reduction has been a remarkably useful and ubiquitous tool in scientific computing and it is now just starting to have a similar impact in machine learning. The goal of this paper is to take a broad look into coarsening techniques that have been successfully deployed in scientific computing and see how similar principles are finding their way in more recent applications related to machine learning. In scientific computing, coarsening plays a central role in algebraic multigrid methods as well as the related class of multilevel incomplete LU factorizations. In machine learning, graph coarsening goes under various names, e.g., graph downsampling or graph reduction. Its goal...
Abstract. Graph partitioning is a well-known optimization problem of great interest in theoretical a...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
International audienceIn recent years, deep neural networks (DNNs) have known an important rise in p...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
Abstract. The graph partitioning problem is widely used and studied in many practical and theoretica...
Can one reduce the size of a graph without significantly altering its basic properties? The graph re...
Large sparse linear systems of equations are ubiquitous in science and engineering, such as those ar...
Coarsening algorithms have been successfully used as a powerful strategy to deal with data-intensive...
Hierarchical abstractions are a methodology for solving large-scale graph problems in various discip...
The interconnectedness and interdependence of modern graphs are growing ever more complex, causing e...
How does coarsening affect the spectrum of a general graph? We provide conditions such that the prin...
Abstract. The graph partitioning problem is widely used and studied in many practical and theoretica...
Graphs can be found anywhere from protein interaction networks to social networks. However, the irre...
Abstract. Graph partitioning is a well-known optimization problem of great interest in theoretical a...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
International audienceIn recent years, deep neural networks (DNNs) have known an important rise in p...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
Abstract. The graph partitioning problem is widely used and studied in many practical and theoretica...
Can one reduce the size of a graph without significantly altering its basic properties? The graph re...
Large sparse linear systems of equations are ubiquitous in science and engineering, such as those ar...
Coarsening algorithms have been successfully used as a powerful strategy to deal with data-intensive...
Hierarchical abstractions are a methodology for solving large-scale graph problems in various discip...
The interconnectedness and interdependence of modern graphs are growing ever more complex, causing e...
How does coarsening affect the spectrum of a general graph? We provide conditions such that the prin...
Abstract. The graph partitioning problem is widely used and studied in many practical and theoretica...
Graphs can be found anywhere from protein interaction networks to social networks. However, the irre...
Abstract. Graph partitioning is a well-known optimization problem of great interest in theoretical a...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
International audienceIn recent years, deep neural networks (DNNs) have known an important rise in p...