Also published as a journal article: Lecture Notes in Computer Science, 2010; 5995: pp.667-675Spectral graph partitioning is a powerful tool for unsupervised data learning. Most existing algorithms for spectral graph partitioning directly utilize the pairwise similarity matrix of the data to perform graph partitioning. Consequently, they are incapable of fully capturing the intrinsic structural information of graphs. To address this problem, we propose a novel random walk diffusion similarity measure (RWDSM) for capturing the intrinsic structural information of graphs. The RWDSM is composed of three key components—emission, absorbing, and transmission. It is proven that graph partitioning on the RWDSM matrix performs better than on the pair...
It is a well established fact, that – in the case of classical random graphs like variants of Gn,p o...
A lot of the data faced in science and engineering is not as complicated as it seems. There is the p...
There are many successful spectral based unsupervised dimensionality reduction methods, including L...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
Clustering based on the random walk operator has been proven effective for undirected graphs, but it...
This course project provide the basic theory of spectral clustering from a graph partitioning point ...
Abstract The construction process for a similarity matrix has an important impact on the performance...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
We build upon recent advances in graph signal processing to propose a faster spectral clustering alg...
In spite of the simple linear relationship between the adjacency A and the Laplacian L matrices, L=D...
International audienceWe build upon recent advances in graph signal processing to propose a faster s...
This work presents a novel procedure for computing (1) distances between nodes of a weighted, undire...
Spectral clustering methods are common graph-based approaches to clustering of data. Spectral cluste...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
It is a well established fact, that – in the case of classical random graphs like variants of Gn,p o...
A lot of the data faced in science and engineering is not as complicated as it seems. There is the p...
There are many successful spectral based unsupervised dimensionality reduction methods, including L...
In graph coarsening, one aims to produce a coarse graph of reduced size while preserving important g...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
Clustering based on the random walk operator has been proven effective for undirected graphs, but it...
This course project provide the basic theory of spectral clustering from a graph partitioning point ...
Abstract The construction process for a similarity matrix has an important impact on the performance...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
We build upon recent advances in graph signal processing to propose a faster spectral clustering alg...
In spite of the simple linear relationship between the adjacency A and the Laplacian L matrices, L=D...
International audienceWe build upon recent advances in graph signal processing to propose a faster s...
This work presents a novel procedure for computing (1) distances between nodes of a weighted, undire...
Spectral clustering methods are common graph-based approaches to clustering of data. Spectral cluste...
Graph learning plays an important role in many data mining and machine learning tasks, such as manif...
It is a well established fact, that – in the case of classical random graphs like variants of Gn,p o...
A lot of the data faced in science and engineering is not as complicated as it seems. There is the p...
There are many successful spectral based unsupervised dimensionality reduction methods, including L...