© 2018 Association for Computing Machinery. In recent years, spectral graph sparsification techniques that can compute ultra-sparse graph proxies have been extensively studied for accelerating various numerical and graphrelated applications. Prior nearly-linear-time spectral sparsification methods first extract low-stretch spanning tree from the original graph to form the backbone of the sparsi fier, and then recover small portions of spectrally-critical off-tree edges to the spanning tree to significantly improve the approximation quality. However, it is not clear how many off-tree edges should be recovered for achieving a desired spectral similarity level within the sparsifier. Motivated by recent graph signal processing techniques, this ...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
In this paper, we resolve the complexity problem of spectral graph sparcification in dynamic streams...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
Spectral graph sparsification aims to find an ultra-sparse subgraph whose Laplacian matrix can well ...
In this last lecture we will discuss graph sparsification: approximating a graph by weighted sub-gra...
This paper proposes a scalable algorithmic framework for effective-resistance preserving spectral re...
Recent spectral graph sparsification research allows constructing nearly-linear-sized subgraphs that...
Let G be a graph with n vertices and m edges. A sparsifier of G is a sparse graph on the same vertex...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
We present the first almost-linear time algorithm for constructing linear-sized spectral sparsificat...
International audienceThe representation and learning benefits of methods based on graph Laplacians,...
Graph sparsification has been studied extensively over the past two decades, culminating in spectral...
In this thesis, we study how to obtain faster algorithms for spectral graph sparsifi-cation by apply...
We present the first single pass algorithm for computing spectral sparsifiers of graphs in the dynam...
Can one reduce the size of a graph without significantly altering its basic properties? The graph re...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
In this paper, we resolve the complexity problem of spectral graph sparcification in dynamic streams...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
Spectral graph sparsification aims to find an ultra-sparse subgraph whose Laplacian matrix can well ...
In this last lecture we will discuss graph sparsification: approximating a graph by weighted sub-gra...
This paper proposes a scalable algorithmic framework for effective-resistance preserving spectral re...
Recent spectral graph sparsification research allows constructing nearly-linear-sized subgraphs that...
Let G be a graph with n vertices and m edges. A sparsifier of G is a sparse graph on the same vertex...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
We present the first almost-linear time algorithm for constructing linear-sized spectral sparsificat...
International audienceThe representation and learning benefits of methods based on graph Laplacians,...
Graph sparsification has been studied extensively over the past two decades, culminating in spectral...
In this thesis, we study how to obtain faster algorithms for spectral graph sparsifi-cation by apply...
We present the first single pass algorithm for computing spectral sparsifiers of graphs in the dynam...
Can one reduce the size of a graph without significantly altering its basic properties? The graph re...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
In this paper, we resolve the complexity problem of spectral graph sparcification in dynamic streams...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...